Int. J. Mol. Sci. 2009, 10(1) 247-291; doi: 10.3390/ijms10010247
OPEN ACCESS
International Journal of
Molecular Sciences
ISSN 1422-0067
www.mdpi.com/journal/ijms/
Review
The Capabilities of Chaos and Complexity
David L. Abel
The Gene Emergence Project, The Origin of Life Science Foundation, Inc. 113-120 Hedgewood Dr.
Greenbelt, MD 20770-1610 USA. E-Mail: life@us.net; Tel. 301-441-2923; Fax: 301-441-8135
Received: 6 November 2008; in revised form: 27 December 2008 / Accepted: 4 January 2009 /
Published:
Abstract: To what degree could chaos and complexity have organized a Peptide or RNA
World of crude yet necessarily integrated protometabolism? How far could such protolife
evolve in the absence of a heritable linear digital symbol system that could mutate,
instruct, regulate, optimize and maintain metabolic homeostasis? To address these
questions, chaos, complexity, self-ordered states, and organization must all be carefully
defined and distinguished. In addition their cause-and-effect relationships and
mechanisms of action must be delineated. Are there any formal (non physical, abstract,
conceptual, algorithmic) components to chaos, complexity, self-ordering and
organization, or are they entirely physicodynamic (physical, mass/energy interaction
alone)? Chaos and complexity can produce some fascinating self-ordered phenomena.
But can spontaneous chaos and complexity steer events and processes toward pragmatic
benefit, select function over non function, optimize algorithms, integrate circuits, produce
computational halting, organize processes into formal systems, control and regulate
existing systems toward greater efficiency? The question is pursued of whether there
might be some yet-to-be discovered new law of biology that will elucidate the derivation
of prescriptive information and control. “System” will be rigorously defined. Can a lowinformational rapid succession of Prigogine’s dissipative structures self-order into bona
fide organization?
Keywords: Complex adaptive systems (CAS); Complexity theory; Biocybernetics;
Biosemiotics; Emergence; Non linear dynamics; Self-organization; Symbolic dynamics
analysis; Systems theory.
Int. J. Mol. Sci. 2009, 10
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1. Introduction
Stand-alone chaos, complexity and catastrophe should never be confused with our theories and
what we intelligent humans do using abstract conceptual nonlinear dynamic models. Life-origin
science is not especially interested in:
1.
2.
3.
Modern-day human applications of non linear dynamical systems theory
Investigator involvement (artificial selection) in chaos, catastrophe, and complexity
experimental designs.
Information defined in terms of the reduced uncertainty of subjective “observers” and
“knowers”, who did not exist for 99.9% of life’s history.
Life origin science wants to know the capabilities of stand-alone chaos and complexity before any
animal consciousness existed. If all known life depends upon genetic instructions, how was the first
linear digital prescriptive genetic information generated by natural process? In the absence of human
thought and involvement, can objective chaos, complexity and catastrophe generate either or both of
two peculiar entities:
1)
2)
Prescriptive Information (PI) [1-3]? PI refers not just to intuitive or semantic
information, but specifically to linear digital instructions using a symbol system (e.g., 0’s
and 1’s, letter selections from an alphabet, A, G, T, or C from a phase space of four
nucleotides). PI can also consist of purposefully programmed configurable switchsettings that provide cybernetic controls.
Bona fide Formal Organization [4]? By “formal” we mean function-oriented,
computationally halting, integrated-circuit producing, algorithmically optimized, and
choice-contingent at true decision nodes (not just combinatorial bifurcation points).
Int. J. Mol. Sci. 2009, 10
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Both PI and formal organization are abstract, conceptual, non physical entities [1-13]. Scientific
endeavors to better understand cybernetic reality in nature are confronted with the uneasy suggestion
of its transcendence over the physicality it controls. At the heart of all naturalistic life-origin models
lies the presumption of self-organization of inanimate physicality into sophisticated formal utility. The
notion of emergence can be traced back to Aristotle [14], but George H. Lewes was probably the first
to define it in 1875: “The emergent is unlike its components insofar as these are incommensurable, and
it cannot be reduced to their sum or their difference." [15. pg. 412]. The idea of emergence blossomed
in the 1920’s with contributions from C. Lloyd Morgan, C. D. Broad, Samuel Alexander, Henre
Bergson, Alfred North Whitehead, and Arthur O. Lovejoy [16]. Weak and strong versions of
emergence exist [17], but life-origin models of necessity require convincing models of strong
emergence. The whole is greater than the sum of its parts [18]. Novel functional qualities are believed
to arise spontaneously from inanimate physical components [19-22]. First, second, third and now
fourth order (Types I-IV) emergence are said to exist [23]. Heritable linear digital genetic prescription
can produce three-dimensional protein molecular machines that bind, transport and catalyze metabolic
integration. Strong and Type IV emergent theory together attempt to explain the source of these
phenomena. Admits Mark Bedau, "Although strong emergence is logically possible, it is
uncomfortably like magic.” [24].
If Pasteur and Virchow’s First Law of Biology (“All life must come from previously existing life”)
is to be empirically falsified, direct observation of spontaneous generation is needed. In the absence of
such empirical falsification, a plausible model of mechanism at the very least for both Strong and Type
IV emergence (formal self-organization) is needed. Manfred Eigen [25-36] and Tibor Ganti [37-41]
have been leaders in the search for mechanisms of biologic emergence from abiotic environments.
Shuster joined with Eigen to hypothesize hypercycles [42-49]. The Edge of Chaos [21, 22, 50-57] has
been proposed as a possible source, though the description of all of the above models often seems
more poetic or cartoon-like than real. Kauffman’s and Dawkin’s publications, for example, are often
devoid of any consideration of the biochemical catastrophic realities that plague life-origin bench
scientists [20-22, 58-60] [61-63].
Attempts to define complexity are on-going [50, 64-70]. Sequence complexity has been extensively
studied, though far from exhaustively [1, 71-77].
Much debate has occurred over the relation of linear complexity to semantic information [78-83]
[84-92]. Some have attempted to reduce the information of linear digital prescription in genes to mere
thermodynamics, combinatorial probabilism, and physicodynamic complexity [20, 93-106]. Other
investigators tend to view genetic information as literal and real [1, 2, 6, 107-112]. The special case of
semiotic linear digital complexity has fostered the whole new field of Biosemiotics [2, 113-133].
The cause and evolution of complexity are frequently addressed in the literature [10, 134-141].
How complexity relates to life has attracted innumerable papers [6, 142-148]. Systems Biology
emphasizes the growing genomic and epigenetic complexity [149-151]. Attempts to deal with Behe’s
“irreducible complexity” [152] are appearing more often in scientific literature [153-157]. von
Neumann [158] and Pattee [159-161] attempted to deal with the issue of Complementarity between the
formal and physical aspects of complexity. Hoffmeyer and Emmeche have addressed the same basic
problem with Code Duality [162, 163]. Stein described the different sciences of complexity [164].
Norris has researched hypercomplexity [165]; Garzon dealt with bounded complexity [166]; and
Levins the limits of complexity [167]. Bennett originated Logical Depth and its relation to physical
complexity [168].
Attempts to relate complexity to self-organization are too numerous to cite [4, 21, 169-171]. Under
careful scrutiny, however, these papers seem to universally incorporate investigator agency into their
experimental designs. To stem the growing swell of Intelligent Design intrusions, it is imperative that
we provide stand-alone natural process evidence of non trivial self-organization at the edge of chaos.
We must demonstrate on sound scientific grounds the formal capabilities of naturally-occurring
physicodynamic complexity. Evolutionary algorithms, for example, must be stripped of all artificial
selection and the purposeful steering of iterations toward desired products. The latter intrusions into
Int. J. Mol. Sci. 2009, 10
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natural process clearly violate sound evolution theory [172, 173]. Evolution has no goal [174, 175].
Evolution provides no steering toward potential computational and cybernetic function [4, 6-11].
The theme of this paper is the active pursuit of falsification of the following null hypothesis:
“Physicodynamics alone cannot organize itself into formally functional systems requiring algorithmic
optimization, computational halting, and circuit integration.” At first glance the falsification of this
hypothesis might seem like a daunting task. But a single exception of non trivial, unaided, spontaneous
optimization of formal function by truly natural process would quickly falsify this null hypothesis.
Science celebrates positive and parsimonious descriptions of presumed objectivity. But we must
never forget that our knowledge is only “best thus far.” Even the most fundamental laws of physics
technically must be viewed as “tentative.” We rightly eschew diatribes of metaphysical pontifications.
Science proceeds through open-mindedness and the falsification of null hypotheses, not through the
rhetorical pronouncement of dogmas. Popper and many since have exposed the problems associated
with trying to prove any positive hypothesis [176, 177]. Neither induction nor deduction is foolproof.
Theses that cannot be proven ought not to be proclaimed as positive statements of fact.
At the same time, we have spent much of the last century arguing to the lay community that we
have proved the current biological paradigm. Unfortunately, very few in the scientific community
seem critical of this indiscretion. One would think that if all this evidence is so abundant, it would be
quick and easy to falsify the null hypothesis put forward above. If, on the other hand, no falsification is
forthcoming, a more positive thesis might become rather obvious by default. Any positive
pronouncement would only be labeled metaphysical by true-believers in spontaneous selforganization. Those same critics would disingenuously fail to acknowledge the purely metaphysical
nature of the current Kuhnian paradigm rut [178]. A better tact is to thoroughly review the evidence.
Let the reader provide the supposedly easy falsification of the null hypothesis. Inability to do so should
cause pangs of conscience in any scientist who equates metaphysical materialism with science. On the
other hand, providing the requested falsification of this null hypothesis would once-and-for-all end a
lot of unwanted intrusions into science from philosophies competing with metaphysical materialism.
While proof may be evasive, science has an obligation to be honest about what the entire body of
evidence clearly suggests. We cannot just keep endlessly labeling abundant evidence of formal
prescription in nature “apparent.” The fact of purposeful programming at multiple layers gets more
“apparent” with each new issue of virtually every molecular biology journal [179-181]. Says de Silva
and Uchiyama:
“Molecular substrates can be viewed as computational devices that process physical or
chemical 'inputs' to generate 'outputs' based on a set of logical operators. By recognizing
this conceptual crossover between chemistry and computation, it can be argued that the
success of life itself is founded on a much longer-term revolution in information handling
when compared with the modern semiconductor computing industry. Many of the simpler
logic operations can be identified within chemical reactions and phenomena, as well as
being produced in specifically designed systems. Some degree of integration can also be
arranged, leading, in some instances, to arithmetic processing. These molecular logic
systems can also lend themselves to convenient reconfiguring. Their clearest application
area is in the life sciences, where their small size is a distinct advantage over conventional
semiconductor counterparts. Molecular logic designs aid chemical (especially intracellular)
sensing, small object recognition and intelligent diagnostics.” [181]
What scientific evidence exists of physicodynamics ever having programmed a single purposeful
configurable switch-setting? If we cannot present any such evidence, we should be self-honest enough
to start asking ourselves, “How long are we going to try to maintain this ruse that the cybernetic
programming we repeatedly observe is only ‘apparent’ rather than real?”
Int. J. Mol. Sci. 2009, 10
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2. What exactly is complexity?
“Complexity” can tend to be a garbage-can catch-all term we use to explain everything we don’t
understand and cannot reduce. To define complexity, we need to start with one dimension and work
up. When we progress from linear complexity into two and three dimensional complexity, quantifying
the degree of complexity can quickly become intractable [182]. Thus, let us begin by precisely
defining linear sequence complexity.
An unequivocal, pristine, mathematical definition of linear “complexity” already exists in scientific
literature [1, 71, 183]: maximum complexity in a linear string, oddly enough, is randomness.
Maximum complexity cannot be compressed because it lacks patterns and order [183, 184]. A random
string (Random Sequence Complexity, RSC) [1] is the most complex because its sequence cannot be
enumerated using any algorithmically compressive string shorter than itself. Notice that this precise
definition of linear complexity has nothing to do with meaning or function. Complexity in linear
digital strings is fully measurable by the degree to which each string can be algorithmically
compressed. This is true whether the string does anything useful or not. A string comprised of
maximally uncertain elements will be the most complex string because it lacks order and pattern. The
compressibility of that string is therefore extremely low. Uncertainty is measured in bits. The higher
the number of bits of uncertainty, the greater the degree of complexity, and the closer we move toward
a random string:
H = ∑ pi (− log 2 pi )
M
i =1
(1)
This of course is Shannon’s basic measurement of uncertainty in linear sequence complexity.
We have invested so much confidence and anticipation in “complexity” as a potential source of
spontaneous prescriptive information and organization that our senses are jolted by the pristine
mathematical definition of sequence complexity reviewed above. We need to re-educate ourselves
with the realization that maximum complexity is nothing more than randomness. The most complex of
all strings is a random string. Random strings have never been observed to generate non trivial formal
function of any kind. Complexity, therefore, has nothing to do with formal function. Complexity
possesses no creative or computational talents. No justification exists for attributing exquisite formal
organization to mere complexity.
3. Order, structure and pattern
Well, what about order and pattern? If complexity itself is not what produces utility in a linear
digital string, surely order, structure and pattern can. But do they? The answer is no! To understand
why, we must also define order and pattern.
What exactly is “order”? Starting with a single dimension, order in a sequence is defined by an
increasing probability of occurrence of each structure, event, or alphabetical character in that string
[183]. High probability is high order [185]. As the probability of an event approaches 1.0, its Shannon
uncertainty approaches 0 bits [186]. 0 bits of uncertainty is maximum order. Maximum order is
minimal complexity. Order and complexity are antithetical. They lie at opposite extremes of a
bidirectional vector (Figure 1) [71]. The relationship between order and complexity has been welldefined in the literature [1, 3, 71, 187]. Figure 1 shows the antithetical relationship between order and
complexity. Order lies on the opposite end of this bidirectional vector graph from complexity. The
more complex a sequence is, the less ordered. The more ordered a sequence is, the less complex. The
literature is filled with misunderstanding of the relationship between pattern and complexity.
Int. J. Mol. Sci. 2009, 10
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Figure 1. An antithetical relationship exists between linear sequence order and complexity.
Randomness affords the greatest measure of complexity. The more ordered and patterned a
sequence, the less uncertain are its components, and the less complex the sequence. Neither
order nor complexity generates formal meaning or utility, both of which lie in a completely
different dimension from order/complexity measures.
Ordered strings contain repeating patterns such as those found in sugar molecules. As we add
dimensions, high order can be found in sine waves and inorganic crystals. Repeating patterns generate
high order and low complexity. The probability of encountering the next element of a repeating pattern
is high; the probability of coming across any uniqueness (e.g., a crystal impurity) is low.
Highly ordered/patterned strings can be greatly compressed algorithmically. The most ordered
string is exampled by a string of identical letters, or a DNA homopolymer consisting of all adenosines.
A polyadenosine has maximum order, no uncertainty, and therefore no complexity. A polymer of 200
adenosines can be fully enumerated by the very short compression algorithm, “Give me an adenosine;
repeat 200 times.” This compression algorithm for a polyadenosine contains virtually no uncertainty,
and therefore no information potential. It is an example of Ordered Sequence Complexity (OSC) [1] .
Note that statistical order and pattern have no more to do with function and formal utility than does
maximum complexity (randomness). Neither order nor complexity can program, compute, optimize
algorithms, or organize.
A law of physics also contains very little information because the data it compresses is so highly
ordered. The best way to view a parsimonious physical law is as a compression algorithm for reams of
data. This is an aspect of valuing Occam’s razor so highly in science. Phenomena should be explained
with as few assumptions as possible. The more parsimonious a statement that reduces all of the data,
the better [188, 189]. A sequence can contain much order with frequently recurring patterns, yet
manifest no utility. Neither order nor recurring pattern is synonymous with meaning or function.
Those trained in information theory will be quick to point out at this point that “information is
always defined in terms of an observer or knower.” They argue that information is not in the law’s
parsimonious statement or equation, but in the difference (R) between all of the uncertainty of the raw
data, and the lesser amount of uncertainty generated by knowing the law. The problem with this
concept of information is that for most of life’s history, linear digital genetic instructions have been
prescribing exquisite metabolic organization long before any observers or knowers existed. Observers
and knowers themselves would not exist except for the extraordinary amount of cellular programming
and organization that produced humans. Prescriptive Information (PI) [3] cannot be reduced to human
epistemology. To attempt to define information solely in terms of human observation and knowledge
is grossly inadequate. Such anthropocentrism blinds us to the reality of life’s objective genetic
programming, regulatory mechanisms, and biosemiosis using symbol systems [2, 112, 120, 125, 132,
190-194].
Well what about a combination of order and complexity? Doesn’t that explain how prescriptive
information comes into being?
Int. J. Mol. Sci. 2009, 10
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Three subsets of linear complexity have been defined in an abiogenesis environment [1]. These
subsets are very helpful in understanding potential sources of Functional Sequence Complexity (FSC)
as opposed to mere Random Sequence Complexity (RSC) and Ordered Sequence Complexity (OSC)
[1]. FSC requires a third dimension not only to detect, but to produce formal utility. Neither chance nor
necessity (nor any combination of the two) has ever been observed to produce non trivial FSC [4].
Durston and Chiu at the University of Guelph developed a method of measuring what they call
functional uncertainty (Hf) [195]. They extended Shannon uncertainty to measure a joint variable (X,
F), where X represents the variability of data, and F its functionality. This explicitly incorporated the
empirical knowledge of embedded function into the measure of sequence complexity:
H(Xf(t)) = - ∑ P(Xf(t)) logP(Xf(t))
(2)
where Xf denotes the conditional variable of the given sequence data (X) on the described biological
function f which is an outcome of the variable (F). The state variable t, representing time or a sequence
of ordered events, can be fixed, discrete, or continuous. Discrete changes may be represented as
discrete time states. Mathematically, the above measure is defined precisely as an outcome of a
discrete-valued variable, denoted as F={f}. The set of outcomes can be thought of as specified
biological states.
Using this method allowed Durston and Chiu to compare quantifications of 2,442 aligned sequences
of proteins belonging to the Ubiquitin protein family, among many other protein families evaluated.
All of these sequences satisfied the same specified function f, which might represent the known 3-D
structure of the Ubiquitin protein family, or some other function common to ubiquitin. The definition
of functionality used by Durston and Chiu relates to the whole protein family. Thus this data can be
inputted from readily available databases. Even subsets (e.g., the active sites) of the aligned sequences
all having the same function can be quantified and compared. The tremendous advantage of using
H(Xf(t)) is that slight changes in the functionality characteristics of biosequences can be incorporated
and analyzed.
Subsequently, Durston and Chiu have developed a theoretically sound method of actually
quantifying Functional Sequence Complexity (FSC) [77]. This method holds great promise in being
able to measure the increase or decrease of FSC through evolutionary transitions of both nucleic acid
and proteins. This FSC measure, denoted as ζ, is defined as the change in functional uncertainty from
the ground state H(Xg(ti)) to the functional state H(Xf(ti)), or
ζ = ∆ H (Xg(ti), Xf(tj))
(3)
The ground state g of a system is the state of presumed highest uncertainty permitted by the
constraints of the physical system, when no specified biological function is required or present.
Durston and Chiu wisely differentiate the ground state g from the null state Hø . The null state
represents the absence of any physicodynamic constraints on sequencing. The null state produces bona
fide stochastic ensembles, the sequencing of which was dynamically inert (physicodynamically
decoupled or incoherent [196, 197]).
The FSC variation in various protein families, measured in Fits (Functional bits), is shown in Table
1 graciously provided here by Durston and Chiu. In addition to the results shown in Table 1, they
performed a more detailed analysis of ubiquitin, plotting the FSC values out along its sequence. They
showed that 6 of the 7 highest value sites correlate with the primary binding domain [77].
Int. J. Mol. Sci. 2009, 10
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Table 1. FSC of Selected proteins. Supporting data from the lab of Kirk Durston and
David Chiu at the University of Guelph [77] showing the analysis of 35 protein families.
Ankyrin
HTH 8
HTH 7
HTH 5
HTH 11
HTH 3
Insulin
Ubiquitin
Kringle domain
Phage Integr N-dom
VPR
RVP
Acyl-Coa dh N-dom
MMR HSR1
Ribosomal S12
FtsH
Ribosomal S7
P53 DNA domain
Vif
SRP54
Ribosomal S2
Viral helicase1
Beta-lactamase
RecA
Length
(aa)
33
41
45
47
53
55
65
65
75
80
82
95
103
119
121
133
149
157
190
196
197
229
239
240
Number of Null State
Sequences
(Bits)
1,171
143
1,610
177
503
194
1,317
203
663
229
3,319
238
419
281
2,442
281
601
324
785
346
2,372
359
51
411
1,684
445
792
514
603
523
456
575
535
644
156
679
1,982
821
835
847
605
851
904
990
1,785
1,033
1,553
1,037
FSC
(Fits)
46
76
83
80
80
80
156
174
173
123
308
172
174
179
359
216
359
525
675
445
462
335
336
832
Average
Fits/Site
1.4
1.9
1.8
1.7
1.5
1.5
2.4
2.7
2.3
1.5
3.7
1.8
1.7
1.5
3.0
1.6
2.4
3.3
3.6
2.3
2.4
1.5
1.4
3.5
Table 1. Cont.
length (aa)
Number of Null State
FSC
Average
Sequences
(Bits)
(Fits)
Fits/Site
tRNA-synt 1b
280
865
1,210
438
1.6
SecY
342
469
1,478
688
2.0
EPSP Synthase
372
1,001
1,608
688
1.9
FTHFS
390
658
1,686
1,144
2.9
DctM
407
682
1,759
724
1.8
Corona S2
445
836
1,923
1,285
2.9
Flu PB2
608
1,692
2,628
2,416
4.0
Usher
724
316
3,129
1,296
1.8
Paramyx RNA Pol
887
389
3,834
1,886
2.1
ACR Tran
949
1,141
4,102
1,650
1.7
Random sequences
1000
500
4,321
0
0
50-mer polyadenosine
50
1
0
0
0
Shown are sequence lengths (column 1), the number of sequences analyzed for each family
(column 2), the Shannon uncertainty of the Null State Hø (the absence of any physicodynamic
constraints on sequencing: dynamically inert stochastic ensembles) for each protein (column 3), the
FSC value ζ in Fits for each protein (column 4), and the average Fit value/site (FSC/length, column
5). For comparison, the results for a set of uniformly random amino acid sequences (RSC) are
shown in the second from last row, and a highly ordered, 50-mer polyadenosine sequence (OSC) in
the last row. All values, except for the OSC example, which was calculated from the constrained
ground state required to produce OSC, were computed from the null state. The Fit values obtained
can be discussed as the measure of the change in functional uncertainty required to specify any
functional sequence that falls into the given family being analyzed. (Used with permission from
Int. J. Mol. Sci. 2009, 10
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Durston, K.K.; Chiu, D.K.; Abel, D.L.; Trevors, J.T. Measuring the functional sequence
complexity of proteins. Theor Biol Med Model 2007, 4, Free on-line access at
http://www.tbiomed.com/content/4/1/47)
In the pile of “Pick-up Sticks” seen in Figure 2, very little order and patterning are present.
Uncertainty as to how the sticks will fall is high. The pile of sticks is highly complex. In this threedimensional model, it would probably be intractable to compute the complexity of relationships of
each of these sticks to all of the other sticks. The degree of complexity would be staggering. But what
exactly does this enormous degree of complexity DO? The pile of pick-up sticks achieves no utility of
any kind. The imagined capabilities of stand-alone complexity are in reality miniscule at best.
Attributing organization to chaos and complexity employs a combination of fallacious inferences
involving category errors and non sequiturs. “The edge of chaos” [21, 22, 50-54] affords mesmerizing
visions of potential accomplishment. While poetic and wonderfully inviting, the concept is sorely
lacking in scientific content. The functional reality of “the edge of chaos” has been challenged [7, 8,
57, 198].
The association of complexity or patterns with most forms of bona fide organization should never
be confused with causation [199]. Neither order nor complexity is a cause of organization or any other
form of formal algorithmic optimization. We sling the words “chaos,” “complexity,” “order” and
“pattern” around with vivid imagination and a great deal of blind faith in their capabilities. None of the
latter states has ever been observed to produce the slightest amount of algorithmic organization. Standalone chaos and complexity have absolutely nothing to do with generating formal function. Neither do
order and pattern. Self-ordering phenomena produce boring, unimaginative redundancy. Self-ordering
phenomena, just like chaos and complexity, have never been observed to achieve 1) programming, 2)
computational halting, 3) creative engineering, 4) symbol systems, 5) language, or 6) bona fide
organization [4]. The latter are all formal processes, not physicodynamic processes.
Figure 2. a) The degree of three-dimensional computational complexity within a pile of
pick-up sticks is staggering. But what exactly does this enormous degree of complexity
DO? What sophisticated formal function does this pile of objects generate? Mere
combinatorial complexity must never be confused with formal utility. b) A row of dip
switch settings depicts a different category of complexity—algorithmic, cybernetic
programming complexity. Choice contingency is incorporated into purposeful configurable
switch-settings that collectively prescribe formal function.
a)
b)
Suppose stochastic ensembles of oligoribonucleotides were forming out of sequence space in an
imagined “primordial soup.” Since only 4 different nucleotides could be added next to a forming single
positive strand, M in Equation 1 above would = 4. Suppose next that the prebiotic availability pi for
adenine was 0.46, and the pi ’s for uracil, guanine, and cytosine were 0.40, 0.12, and 0.02 respectively.
This is being generous for cytosine, since cytosine would have been extremely difficult to make in any
Int. J. Mol. Sci. 2009, 10
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prebiotic environment [200]. Using these hypothetical base-availability probabilities, the Shannon
uncertainty would have been equal to:
Adenine
0.46 (- log2 0.46)
= 0.515
Uracil
0.40 (- log2 0.40)
= 0.529
Guanine
0.12 (- log2 0.12)
= 0.367
Cytosine
0.02 (- log2 0.02)
= 0.113
1.00
1.524 bits
Notice how unequal availability of the four nucleotides (a form of ordering) greatly reduces
Shannon uncertainty at each locus, and in the entire sequence, of any biopolymeric stochastic
ensemble (Figure 1). Maximum uncertainty would occur if all four base availability probabilities were
0.25. Under these equally available base conditions, Shannon uncertainty would have equaled 2 bits
per independent nucleotide addition to the strand. A stochastic ensemble formed under aqueous
conditions of mostly adenine availability, however, would have had little information-retaining ability
because of its high order [1].
As pointed out in the above reference, even less information-retaining ability would be found in an
oligoribonucleotide adsorbed onto montmorillonite [201-206]. Clay surfaces would have been required
to align ribonucleotides with 3’ 5’ linkages. The problem is that only polyadenosines or polyU’s tend
to form. Using clay adsorption to solve one biochemical problem creates an immense informational
problem (e.g., high order, low complexity, low uncertainty, and low information retaining ability. See
Figure 1). High order means considerable compressibility. The Kolmogorov [207] algorithmic
compression program for clay-adsorbed biopolymers (Figure 2) would read: “Choose adenosine;
repeat the same choice fifty times.” Such a redundant, highly-ordered sequence could not begin to
prescribe even the simplest protometabolism. Such “self-ordering” phenomena would not be the key to
life’s early algorithmic programming.
The RNA Word and pre-RNA World models [208, 209] still prevail despite daunting biochemical
problems. Life origin models also include clay life [210-213]; early three-dimensional “genomes”
[214, 215]; “Metabolism/Peptide First” [216-219]; “Co-evolution” [220-223]; “Simultaneous nucleic
acid and protein” [224-226]; and “Two-Step” models of life-origin [227-229]. In virtually all of these
life origin models, “self-ordering” is confused with “self-organizing.” No mechanism is provided for
the development of a linear digital prescription and oversight system to integrate metabolism. No
known life form exists that does not depend upon such genetic instruction.
4. Autopoesis
Umberto Maturana and Francisco Varela [230-232] argue for a concept of autopoeisis that
presupposes (or begins with) one-celled organisms and progresses evolutionarily all the way up to
humans, their language, and their social structure. They used the term autopoiesis to characterize the
nature of living systems more than to theorize how cellular life came into existence. An autopoietic
system is self-sustaining, homeostatic and autonomous despite having a continuous flow of mass and
energy through the cell. Maturana and Varela’s basic contention is that organisms are inherently
compelled to maintain their own inner nature and identity. Such a concept of “self-making” might
better be described as “self-maintaining.” It does not address the problem of abiogenesis—the
spontaneous generation of life from non life at the molecular evolutionary level. Says Varela (who
often writes jointly with Maturana),
"If living systems are machines, that they are physical autopoietic machines is trivially
obvious: they transform matter into themselves in a manner such that the product of their
operation is their own organization. However, we deem the converse as also true: A
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physical system if autopoietic is living. In other words, we claim that the notion of
autopoiesis is necessary and sufficient to characterize the organization of living systems."
So far as abiogenesis research is concerned, such a statement seems circular or tautological in
nature. Their publications offer no mechanisms or help in understanding the processes by which
inanimate physics and chemistry wrote life’s cybernetic programming. They do not address how an
abiotic physicochemical environment organized chemical reactions into an 11-step biochemical
pathway such as the Krebs Cycle. The latter yields no pragmatic benefit until the final biochemical
step.
Pier Luigi Luisi, one of the world’s leading experts in primordial membrane theory, points out that
Maturana and Valari’s concept of autopoiesis “is not a theory about the origin of life—but rather a
pragmatic blueprint of life based on cellular life.” [233] Luigi goes on to state that Maturana and
Varela’s theory of autopoiesis “had, and still has, a difficult time being accepted into the mainstream
of life-science research.” [233]
Margaret Boden [234-236] also tends to presuppose organization rather than to eludicate
mechanisms of its abiotic derivation. She challenges Maturana’s and Varela’s use of cognitive
language as being too liberal: “Life does not imply cognition.” But many of Boden’s publications
themselves presuppose and incorporate human cognition and epistemology into her models. None of
these authors purport to offer explanations for life origin. They are simply not on the forefront of
abiogenesis research at the biochemical level. No physicochemical mechanism is provided for selforganization.
The term autopoesis has been used on occasion in a much broader sense than Maturana and Varela
coined it. Some life-origin investigators use “autopoesis” to refer to the prebiotic “self-making from
scratch” of life—of biochemical abiogenesis. But the use of this broader term in some publications has
not afforded any new purely physical models of “self-organization” or “emergence”.
5. Complex adaptive systems (CAS)
Complex adaptive systems (CAS) [137, 237, 238] are comprised of multiple interconnected (yet
diverse) components. CAS readily undergo change. Healthy (CAS) are high-dimensional with respect
to turbulence and potential for change. Rigid, low dimensional systems are said to be unhealthy. CAS
are called “adaptive” because they are said to learn from experience. Cells, embryos, immune systems,
central nervous systems, ecosystems, social insect colonies, human social systems, and economics, are
all included in CAS studies. Either the CAS is itself alive, or it is a robot programmed (cybernetically
determined) by life to “learn.” It is not surprising that so many systems theory and CAS models
presuppose and use life rather than explain the derivation of life. Already-existing cellular prescriptive
information is incorporated into the model in virtually every CAS discipline. Self-organization is
claimed, but never empirically demonstrated independent of experimenter steering.
Artificial life efforts generally pursue CAS models [6, 146, 239-246] in what amounts to an
engineering context. So-called “evolutionary algorithms” and “directed evolution” strategies are often
used to support an evolutionary paradigm. But both strategies amount to artificial selection, not natural
selection. They have little or nothing to do with neoDarwinism.
Positive and negative feedback plays a major role in systems theory, especially in the social
sciences [247-249]. Feedback mechanisms are characterized by a circularity of causation. Output
components are fed back into the input. But feedback mechanisms need formal controls to generate
sophisticated utilitarian results. Purely physicodynamic hypercycles [44, 47, 49], for example,
consume all available resources in their redundant and unimaginative mutual replications. The result is
catastrophic with regard to any formal self-organization. Empirical evidence is sorely lacking to
support the hoped-for relentless growth in integrated protometabolic function [4]. The excitement that
hypercycle theory generated in the 1980’s has proven over time to be little more than Freudian wish
fulfillment.
Trying to explain the spontaneous occurrence of CAS encounters early roadblocks. As with
Shannon “information” theory, the potential information provided by uncertainty measures is not the
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same as intuitive information [250, 251], semantic information [252-258], biological information [98,
99, 101, 111, 190, 259-268], functional information [269, 270], or the programmed prescriptive
information (PI) that generates formal utility [1, 3, 12]. Combinatorial uncertainty is essential in any
physical matrix for that matrix to be able to retain instantiated prescriptive information. But mere
combinatorial uncertainty and the potential for change possess no programming talents [3, 9, 10].
For complex adaptive systems to progress in the direction of achieving formal utility, selection for
potential function must take place at individual decision nodes, logic gates, and configurable switch
settings prior to the realization of that function. An inanimate environment cannot do this. In addition,
the syntax of such choices for utility must be integrated into programmable circuits to achieve
computational halting. Combinatorial uncertainty does not provide any mechanism for steering
physicality toward abstract, conceptual, formal computational success. Inanimate nature possesses no
motivation, let alone formal skills, to pursue integration of pathways and cycles into a holistic
metabolic scheme.
The illusion of abundant empirical support for the spontaneous generation of CAS arises from the
conflation of physical combinatorial uncertainty with the agency of the experimenter. The
experimenter invariably steers events toward desired function behind the scenes. Even before
critiquing Materials and Methods of many CAS and systems theory papers, investigator involvement
in experimental design is usually apparent right from the author’s own words. For example, in a paper
on adaptive feedback control for linearizable chaotic systems [271] we read: “A remarkable feature of
the proposed approach is that it can be used for chaos control as well as chaos synchronization.”
[italics mine] Note the passive voice. Used by what or by whom? “Numerical simulations of two wellknown chaotic systems are illustrated to show the effectiveness and robustness of the proposed
adaptive control strategy.” [italics mine] Inanimate nature does not do “numerical simulations.”
Where exactly within natural physicodynamic interactions did “control strategy” come from? Such
steering strategy toward utilitarian capability did not arise from physicodynamics. The steering arose
purely from the experimenter’s choice contingency—from the investigator’s goals, experimental
design, and artificial selection for what was wanted. Many papers actually acknowledge up front the
role of “engineering,” sometimes right in their titles [272-279] (e.g., “Simulation-Based Engineering
Of Complex Adaptive Systems” [280]).
Attempts are usually made to attribute this acknowledged need for engineering to evolution [273,
277, 281, 282]. But natural selection never works at the decision node programming level [10].
Evolution works only on already-programmed, already-living, already-fittest phenotypic organisms
[175]. Selection pressure is nothing more than the differential survival and reproduction of the fittest
small populations of living organisms [10]. An adequate selection mechanism for potential
computational function has always been lacking in evolution theory. This is all the more painfully
apparent at the molecular evolution level. No basis for preferring stand-alone function over non
function exists in an inanimate prebiotic environment [10]. Worse yet, an inanimate environment has
no ability to program for a potential function that does not yet exist [9]. Yet selection for potential
function is exactly what genetic programming requires [12]. Genetic programming is “written in
stone” into linear digital sequences bound by rigid 3’5’ phosphodiester covalent bonds prior to
transcription, translation, protein-folding, and three-dimensional metabolism [3].
6. The big three: Chance, necessity and selection
Selection must be included along with “chance and necessity” [174] as a fundamental category of
reality. Why? First, biological science presupposes natural selection as its single most organizing
paradigm. Without selection, evolution is impossible. Linear digital genetic instructions represent
selection-based cybernetic programming. Life uses a symbol system as evidenced by the codon table.
Symbols must be selected from an alphabet of symbols. Nucleotides must be selected from a phase
space of four options at each locus in the DNA string. Second, the scientific method pre-assumes the
reality and reliability of formal rationality, mathematics, cybernetic programming, and predictive
computations. All of these operational tools depend upon decision theory [283-285]. The practice of
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science would be impossible without selection at bona fide decision nodes, logic gates and
configurable switch settings. Chance and necessity, as Monod pointed out [174], are inadequate to
describe everything we repeatedly observe, life especially. Science must acknowledge the reality and
validity of selection as a fundamental, “properly basic” category.
A third dimension is required to see what relation, if any, order and complexity have to meaning
and function. It is possible to write a highly functional computationally halting program that is non
compressible (manifests no patterns). Each symbol selection represents an independent choice. A third
dimension is required to distinguish what appears to be a random string from a functional program.
That third dimension is the reality of selection, whether in the form of a) natural selection, or b)
artificial selection:
a) Natural selection is a very special case indeed. Differential survival and reproduction of
the fittest already-computed, already-living small populations of organisms is very
indirect. Selection is not intended; it just happens secondarily. No purpose guides
selection events. No true decision nodes are involved because evolution has no goal. In
this sense, selection “pressure” is a misnomer.
Differential survival is more
happenstantial than pushed, more after-the-fact than pursued.
b) Artificial selection is the essence of formalism. Despite decades of concentrated research
on consciousness and artificial intelligence, choice contingency remains elusive when
approached from the direction of physicality. The mind/body problem is alive and well in
the philosophy of science.
No known natural process exists that spontaneously writes meaningful or functional syntax. Only
agents have been known to write meaningful and pragmatic syntax. Physicality cannot compute or
make arbitrary symbol selections according to arbitrarily written rules. Physicality cannot compress.
Physicality cannot value or pursue formal utility. Physicality is blind to pragmatic considerations, all
of which are formally valued and pursued. No known mechanism exists in inanimate nature to steer
physical events toward algorithmic optimization. Many epigenetic factors notwithstanding, genetics
and genomics largely program phenotypes using a symbol system of linear digital prescription.
7. Do symbol systems exist outside of human minds?
Metabolism employs primarily proteins. The nucleotide sequences in mRNA prescribe the amino
acid sequences that determine protein identity. DNA is largely inert. It plays no direct physicochemical
role in protein binding, transport and catalysis. Molecular biology’s two-dimensional complexity
(secondary biopolymeric structure) and three-dimensional complexity (tertiary biopolymeric structure)
are both ultimately determined by linear sequence complexity (primary structure; functional sequence
complexity, FSC). The chaperone proteins that aid polyamino acid folding are also prescribed by the
linear digital genetic programming instantiated into DNA sequencing.
Genetics not only utilizes a linear digital symbol system, but abstract Hamming block coding to
reduce noise pollution in the Shannon channel (triplet codons to prescribe each amino acid). Anticodons are at opposite ends of t-RNA molecules from amino acids. The linking of each tRNA with the
correct amino acid depends entirely upon on a completely independent family of tRNA aminoacyl
synthetase proteins. Each of these synthetases must be specifically prescribed by separate linear digital
programming, but using the same MSS. These symbol and coding systems not only predate human
existence, they produced humans along with their anthropocentric minds. The nucleotide and codon
syntax of DNA linear digital prescription has no physicochemical explanation. All nucleotides are
bound with the same rigid 3’5’ phosphodiester bonds. The codon table is arbitrary and formal, not
physical. The semantic/semiotic/bioengineering function required to make proteins requires
dynamically inert configurable switch-settings and resortable physical symbol vehicles. Codon syntax
communicates time-independent, non-physicodynamic “meaning” (prescription of biofunction). This
meaning is realized only after abstract translation via a conceptual codon table. To insist that codon
syntax only represents amino acid sequence in our human minds is not logically tenable.
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Figure 3 shows the prescriptive coding of a section of DNA. Each letter represents a choice from
an alphabet of four options. The particular sequencing of letter choices prescribes the sequence of
triplet codons and ultimately the translated sequencing of amino acid building blocks into protein
strings. The sequencing of amino acid monomers (basically the sequencing of their R groups)
determines minimum Gibbs-free-energy folding into secondary and tertiary protein structure. It is this
three-dimensional structure that provides “lock-and-key” binding fits, catalysis, and other molecular
machine formal functions. The sequencing of nucleotides in DNA also prescribes highly specific
regulatory micro RNAs and other epigenetic factors. Thus linear digital instructions program
cooperative and holistic metabolic proficiency.
Not only are symbol systems used, but a bijection must occur between two independent symbol
systems. Bijection (translation; a symbol system to symbol system correspondence) is rule-based, not
physical law-based. No cause-and-effect necessity exists in the linking of anticodons, amino acids,
tRNAs, and amino acyl tRNA synthetases with codons. The anticodon is located on the opposite end
of tRNA from the amino acid. The correspondence between the two languages is arbitrary and
abstract. By arbitrary, we do not mean random. Arbitrary means free from physicodynamic
determinism. Bijection rules are freely selected. Translation of this linear digital prescription into
functionally specific polyamino acid chains cannot be explained by physicodynamics. It is not lawbased, and it certainly is not random. If this were an empirical/inductive contention, “cannot” would
have to be replaced with “has not yet been.” The problem is that the statement is a valid inference of
deductive logic. The conclusion is as unequivocal as that produced by balanced mathematical
manipulations of any equation. Neither fixed/forced laws nor chance can logically make non trivial
computationally halting programming decisions. It is a logical impossibility for chance and/or
necessity to exercise bona fide choice contingency. They are in isolated categories (see Section 8).
Neither unaided Markov chains nor physicodynamic determinism can select for potential formal
function.
Figure 3. A section of Alosa pseudoharengus (a fish) mitochondrion DNA. This reference
sequence continues on all the way up to 16,621 “letters.” Each nucleotide is a physical
symbol vehicle in a material symbol system. The specific selection of symbols and their
syntax (particular sequencing) prescribes needed three-dimensional molecular structures
and metabolic cooperative function prior to natural selection’s participation. (Source:
http://www.genome.jp/dbget-bin/www_bget?refseq+NC_009576)
1 gctagtgtag cttaagcaaa gcataacact gaagatgtta agatgggccg tagaaagccc
61 cacgggcaca aaggtttggt cctgacttta ttatcagctt taacccaatt tacacatgca
121 agcctccgca cccctgtgag gatgccctca atcccccgtc cggggacgag gagccggtat
181 caggcacact ttttagccca agacgccttg cttagccaca cccccaaggg aattcagcag
241 tgatagacat taagccataa gtgaaaactt gacttagtca gggttaagag ggccggtaaa
301 actcgtgcca gccaccgcgg ttatacgaga ggccctagtt gattcactcg gcgtaaagag
361 tggttatgga gaataaaata ctaaagccga agacccctta ggccgtcata cgcacctagg
421 ggctcgaatt atagacacga aagtagcttt accccttccc accagaaccc acgacagctg
481 ggacacaaac tgggattaga taccccacta tgccccgccg taaacttaga tattccagta
541 caacaaatat ccgccagggg actacgagcg ccagcttaaa acccaaagga cttggcggtg
601 cttcagaccc ccctagagga gcctgttcta gaaccgataa cccccgttca acctcactac
661 tccttgcttt tcccgcctat ataccaccgt cgccagctta ccctgtgaag gtactacagt
721 aagcagaatg agtaatactc aaaacgtcag gtcgaggtgt agcgtacgaa gtaggaagaa
781 atgggctaca ttatctgatc cagattattc acggaaggtt gtctgaaacg acaatccgaa
841 ggtggattta gcagtaaagg gggaatagag tgcccccttg aagccggctc tgaagcgcgc
901 acacaccgcc cgtcactctc cccaacaacc gcctacacca aggtaaataa cacaacatcc
961 gtcacaaggg gaggcaagtc gtaacatggt aagtgtaccg gaaggtgcac ttggaataat
1021 cagggtgtgg ctgagacagt taagcgactc ccttacaccg agaagacatc catgcaagtt
1081 ggatcaccct gaactaaaca gctagctcaa actataaaaa ccaaattaat gatatagata
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The noise-reducing Hamming “block coding” of triplets of nucleotides to prescribe each specific
amino acid is all the more abstract and formally conceptual. The triplet codon/amino acid coding table
has been shown to be conceptually ideal in a formal sense [286]. Block-coding greatly reduces the ill
effects of a noisy channel on transmitted messages. Fewer prescriptive reading errors occur.
Translation between the nucleotide and amino acid symbol systems is extraordinarily reliable. In
addition, organisms possess amazing repair mechanisms to undo what noise pollution effects do occur
to biomessages. Physics and chemistry provide no mechanisms to explain any of these sophisticated
formal control and correction capabilities. They clearly traverse The Cybernetic Cut [9]—a great
divide in nature between those phenomena that can be explained through the chance and necessity of
natural process vs. those phenomena that can only be explained through formal steering and controls.
But the peculiarity of life over inanimate physics extends far beyond the above discussion. DNA
requires editing in the course of its transcription to coding mRNA. And we have not even touched on
the roles of many other independent players in the formal integration of transcription, translation,
regulation, metabolism, and development. Epigenetic factors are a large part of overall holistic true
organization [287-292]. Post-translational editing also plays a role [293-296].
As physicist Howard Pattee has demonstrated in many publications [191, 192, 297-302], openended evolution (OEE) is impossible without a linear digital genetic symbol system that can mutate
independent of the real-time living of the phenotypic organisms that harbor them. Outwardly, the same
relatively stable phenotypes exist and mate while tremendous modifications can be occurring in their
genomes. Says Pattee, "A non-dynamic descriptive model evades an infinite regress by leaving time
out of its rules and symbols. Self-describing models interact with dynamical systems by codes that we
tacitly understand as writing, reading and interpreting.” . . . . "Separate description and construction
components are necessary for complex systems that can adapt and evolve." [303]
Most mutations are silent. Genetic drift would be impossible without a genetic material symbol
system (MSS) that can experience abundant variation within the same basic phenotype [196, 304,
305]. The phase space of potential new instructional sequences would be severely limited if genetic
drift from successive point mutations, duplications, inversions, transpositions, crossings over, could
not progress at the genetic level prior to phenotypic realization.
Literal genetic algorithms, not figurative ones, prescribe and control life. Nucleotides function in an
objective, not just a human subjective symbolic capacity. The particular symbol selection at each
decision node of nucleotide polymerization is isolated from physicodynamic causation by a dynamic
discontinuity [196, 304, 305]. Although the instructions are physically instantiated into material
symbol systems using physical symbol vehicles, the programming is fundamentally formal.
“Semantic/semiotic/bioengineering function requires dynamically inert, resortable, physical symbol
vehicles that represent time-independent, non-dynamic “meaning.” (e.g., codons).” [1] No empirical or
rational basis exists for granting to physics or chemistry such non-dynamic capabilities of functional
sequencing. Neither chance nor necessity (fixed law) can program configurable switches to integrate
circuits or organize formal utility.
Linear digital prescription in physical nucleic acid has thus far invariably been associated with life.
A fully post modern anthropocentrism cannot argue a logically consistent macroevolutionary
paradigm. If naturalistic/materialistic science believes anything, it believes that an objectively real
“physical brain secretes mind as the liver secretes bile” [as Pierre Jean Georges Cabanis (1757-1808),
Karl Vogt and many others since have phrased it]. Jakob Moleschott (1822-1893) is generally given
credit for the renal version: "The brain secretes thought as the kidney secretes urine.” For
macroevolution theory to fly, a very real genetic symbol system must evolve through objectively real
early eukaryotes, invertebrates, vertebrates, mammals and primates. A purely subjective or solipsistic
view of nucleotides and codons—trying to deny that they are real physical symbol vehicles—totally
compromises macroevolutionary theory.
Macroevolution theory of necessity presupposes a literal history of progressive adaptation of
millions of objectively existent species through changes in objectively existent nucleotide symbol
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sequencing. The formal, representational codon table not only predates human minds, but humans
themselves.
8. Symbolic dynamics analysis
It is important not to confuse objectively existent Random, Ordered and Functional Sequence
Complexities in nature with symbolic dynamics analysis methodologies [306-309] created and applied
by human experimenters. The symbolic dynamics models of human minds use abstract symbols to
represent each state in discrete time intervals. Evolution is described by infinite sequences of symbols.
A sophisticated shift operator must also be used. All aspects of symbolic dynamics, like the scientific
method itself, is a formal enterprise, not a physicodynamic cause and effect chain of the inanimate
physical world. As pointed out in the introduction of this paper, applied sciences such as symbolic
dynamics analysis provide no help in explaining either gene emergence or spontaneous metabolic selforganization.
Both symbolic dynamics and objective genetic cybernetic programming [12] employ linear digital
(discretized) symbol strings. In symbolic dynamics, if the state vector is not inherently discrete, it must
be discretized to yield what is called a coarse-grained description of the system. But that is about
where the similarities end.
In symbolic dynamics, we assign an arbitrary symbol to represent each discrete physicodynamic
state. But inanimate nature cannot represent anything using symbols. The latter is a formal function,
not a physicodynamic effect that would occur in a primordial environment. Second, using a symbol to
represent a physicodynamically determined state is not a control function. It is merely a descriptive
function similar to symbolizing initial conditions with formal units of measure. Although both are
formal functions, neither is cybernetically determinative. The symbol does not represent a prescriptive
decision node choice from among real options. Thus a sequence of symbols in symbolic dynamics
serves no programming function. Linear digital genetic prescription does. The latter programming
strings not only predate animal existence, they produced animals, their brain and minds. Such
programming cannot be reduced to human epistemological models of information. Genetic cybernetics
at the cellular level is objective, not subjective.
In symbolic dynamics, probability distributions of complexity measures are used to describe and
analyze chaotic states. This places symbolic dynamics on similar footing with Shannon transmission
engineering. Both systems measure probabilistic combinatorialism. Neither can address meaning,
function, or the prescription of formal cybernetic function.
In symbolic dynamics (and most Monte Carlo simulations) time is measured in discrete intervals.
Genetic symbol systems, like language, are time-independent in the sense that a seed’s genome can
remain in a state of suspended animation for centuries, yet still prescribe the same metabolic
integration and life. The genome’s messages are meaningful and functional in multiple time frames,
environments, and with varying rates of catalysis.
The “words” in symbol sequences of symbolic dynamics analysis are derived and recognized
through an arbitrary formal scheme generated by investigators’ minds. This is artificial selection. It
has no parallel in natural selection. Natural selection is nothing more than differential survival and
reproduction of already-computed phenotypic organisms. Differential survival plays no role in
molecular evolution or initial genetic programming.
9. Two kinds of contingency
Contingency means that events could have happened other than what unfolded [310]. Outcomes are
not fully determined by prior cause-and-effect chains. Variability and degrees of freedom exist.
Outcomes are not “necessary”—they are not mandated by natural laws working on initial conditions.
But there are two kinds of contingency, 1) Chance contingency and 2) Choice contingency.
1) Chance contingency is exampled by heat agitation and Brownian movement of molecules
in gas and fluid phases. We refer to chance contingency as “randomness.” Chance
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contingency is statistically describable and predictable. Relative degrees of determinism
and chance contingency can co-exist. Weighted means can be calculated for situations
with seeming incomplete determinism. Some argue that all physical behavior is ultimately
caused, and that chance contingency is only an illusion. Combinations of forces and their
effects can be extremely complex. Yet-to-be-discovered forces and relationships may also
be at work [199]. But functionally, on the macroscopic level especially, distinct
advantages obtain from regarding chance contingency as real and for quantifying possible
outcomes statistically.
2) Choice contingency obtains at true decision nodes. Decision nodes are much more than
mere bifurcation points. Bifurcation points can be traversed by chance contingency. Any
attempt to reduce decision nodes to mere bifurcation points results in rapid deterioration of
any potential non trivial formal function. The existence of bifurcation points does not
account for computational success. Organization and formal utility are achieved through
the controlled opening and closing of logic gates. The latter requires bona fide choices
made with steering and programming intent.
10. Configurable switches
Figure 4 shows an old-fashioned binary configurable switch. Such a switch represents the simplest
decision node. Everything computational and organizational stems back to binary decision nodes.
Binary decision nodes are the basis of all formal function. Even analog and index systems are
ultimately based on binary choices. An analog rheostat knob, for example, must be designed to
increase power when turned in one direction (e.g., clockwise) and to decrease power when turned in
the opposite direction (e.g., counterclockwise).
Can we describe any gradual “degrees of organization” that are possible in the flipping of each
binary switch knob? Note that the pictured switch knob cannot be found in a neutral position. The
switch is designed with a logical “excluded middle.” It will always be found in either the on or off
position. Such configurable switches are designed to record yes/no, on/off, 1/0 purposeful
programming choices. There is no gradation of selection at each individual binary decision node. The
switch knob will be found in either the right or left position.
Figure 4. a) A binary configurable switch. Though physical, the switch-setting is
nonetheless physicodynamically inert (“dynamically decoupled or incoherent” [196, 197]).
No physical force field determines the direction this knob is pushed. The vector of knob
push is determined by formal choice contingency alone, not by chance or necessity, and
not by order or complexity. b) An integrated circuit board arises only out of unified,
coherent, purposefully cooperative, truly organized logic-gate switch-settings. The number
of permutations of voluntary (choice-contingent; configurable) switch-setting combinations
quickly becomes staggering. Often only one configuration achieves a certain functional
computational halting.
a)
b)
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Configurable switches are dynamically inert (dynamically incoherent; dynamically decoupled from
physicodynamic causation) [196, 197]. This means that on a horizontal switch board, the force of
gravity works equally on all potential switch positions. Physicodynamics plays no role in which way
the switch knob is pushed. This is the very meaning of “configurable” switches. Their setting is
completely decoupled from physicodynamic causation. They can only be set by formal choice
contingency, not by chance or law. It is the freedom of formal choice at configurable switches that
makes all forms of formal sophistication possible in any physical system. Nonphysical formalism
alone determines each switch setting. The switch is a “dynamically-inert configurable switch.”
The switch in Figure 4 happens to be a binary switch. We could have just as easily photographed a
quaternary switch. With a quaternary switch, the knob could be pushed away from you, pulled toward
you, pushed to the right, or pushed to the left. A quaternary configurable switch represents 2 bits of
uncertainty. The option space of equally available four possible nucleotides also represents 2 bits of
uncertainty. Each potential add-on locus in a forming single-stranded oligoribonucleotide in an
imagined primordial soup adds an additional 2 bits of uncertainty to the strand. The same is true of a
single-stranded (positive, instructional) DNA polymer. Each locus corresponds to a four-way (tertiary)
configurable switch. The high degree of uncertainty in a potential single-stranded DNA physical
matrix is what allows DNA to retain such tremendous amounts of information. Spinelli & MayerFoulkes [311] found specific statistical differences between exon and intron DNA sequences,
referrring to them as "linguistic DNA features." Large numbers of other researchers have found
linguistic like properties in DNA prescriptive information as summarized by Searls [312].
Although statistical differences and patterns distinguish one linear digital prescriptive string from
another, no prescriptive information exists because of probabilistic combinatorialism [77]. Prescriptive
information only exists at the moment a particular choice for potential function is made [1]. When a
nucleotide is rigidly (covalently) bound to the single-stranded string, the four-way configurable switch
knob is actually pushed in one of four possible directions. At that moment all Shannon uncertainty is
replaced with formal causation. The vector of the four-way switch knob is determined by choice
contingency, not by physicodynamics. It is only when one of the four options is actually selected for
potential function that prescriptive information comes into existence. It is only when that choice
initiates movement of the physical switch knob in one of the four directions that formalism is
instantiated into physicality.
11. Two kinds of selection
Two kinds of selection exist: 1) Selection of existing function (e.g., natural selection; differential
survival) VS. 2) Selection for potential function (e.g., artificial selection for formal function).
Selection of existing fitness is accomplished by selection pressure. Natural selection consists of
differential survival and reproduction of the fittest already-computed phenotypes. It occurs only at the
organismic level of already-living small populations of organisms. “Survival of the fittest” is
environmental selection of the best existing breeds, varieties, and species.
Selection for potential fitness is always artificial rather than natural. Selection for potential fitness is
a formal, not a physical enterprise. Selection for potential fitness occurs at decision nodes. Symbols
systems and configurable switch settings are used to represent those decisions. Examples of formal
selection include language, cybernetic programming, logic, math, computation, algorithmic
optimization, design and engineering function, organization of any kind.
Linear digital genetic programming using a Hamming block code of 3 nucleotide selections to
represent and prescribe each amino acid selection is a form of selection for potential fitness, not
selection of existing fitness. Genetic programming cannot be explained by natural selection. The
environment cannot select for potential function. Evolution has no goal or programming ability at the
genetic level. As discussed above, the selection of each nucleotide corresponds to the setting of a fourway quaternary configurable switch. Three quaternary switch-settings in a row prescribe each amino
acid “letter” of a very long protein “word.” No fitness exists for the environment to favor or select at
Int. J. Mol. Sci. 2009, 10
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the level of 3’5’ phosphodiester bond formation between nucleotides. These informational
biopolymers must be sequenced prior to the realization of any prescriptive, enzymatic, or regulatory
function. Selection at the level of nucleotide sequencing clearly falls within the category of “Selection
for potential function” rather than the category of “Selection of existing function.” This is called the
GS (Genetic Selection) Principle [10]. The GS Principle states that selection must occur at the
decision-node level of rigid covalent bond linkage of specific monomers to form functional syntax.
After-the-fact selection of already computed phenotypic fitness is not sufficient to explain genetic
programming or the metabolism it organizes.
We must also remember that natural selection does not favor function. Selection pressure favors
only the survival of the fittest holistic, already-living organisms. No organism would be alive without
thousands of cooperating molecular machines, integrated biochemical pathways and cycles, and the
formal goal of maintaining a homeostatic metabolism. All of these algorithmic processes must be
optimized and in place before any organism can come to life, let alone constitute the fittest selectable
life. Chang et al. [313] state:
'Chemical evolution' should not be confused with Darwinian evolution with its
requirements for reproduction, mutation and natural selection. These did not occur before
the development of the first living organism, and so chemical evolution and Darwinian
evolution are quite different processes.
12. What optimizes genetic algorithms?
Computational methods often employ genetic algorithms (GA’s). The appeal of GAs is that they are
modeled after biological evolution. The latter is the main motivation for tolerating such an inefficient
awkward process. The GA search technique begins with a large random pool of representations of
“potential solutions.” Genetic algorithms are seen as a subset of evolutionary algorithms and as
“evolutionary computation.” The methodology is inspired by modeling a random beginning phase
space, various kinds of mutations, inheritance and selection. The experimenter chooses the fittest
solutions from each generation out of the “evolving” phase space of potential solutions. The goal of
the process is optimization of a certain function.
All too many evolutionary computationists fail to realize the purely formal nature of GA
procedures. GA’s are not dealing with physicodynamic cause-and-effect chains. First, what is being
optimized is a formal representation of meaning and function. A representation of any kind cannot be
reduced to inanimate physicality. Second, “potential solutions” are formal, not merely physical
entities. Third, at each iteration (generation) a certain portion of the population of potential solutions is
deliberately selected by the agent experimenter (artificial selection) to “breed” a new generation. The
optimized solution was purposefully pursued at each iteration. The overall process was entirely goaldirected (formal). Real evolution has no goal [172-175]. Fourth, a formal fitness function is used to
define and measure the fittest solutions thus far to a certain formal problem. The act of defining and
measuring, along with just about everything else in the GA procedure, is altogether formal, not
physical [140, 194, 298, 314, 315].
Despite the appealing similarities of terms like “chromosomes,” GA’s have no relevance
whatsoever to molecular evolution or gene emergence. Inanimate nature cannot define a fitness
function over measures of the quality of representations of solutions. GAs are no model at all of
natural process. GA’s are nothing more than multiple layers of abstract conceptual engineering. Like
language, we may start with a random phase space of alphabetical symbols. But no meaning or
function results without deliberate and purposeful selection of letters out of that random phase space.
No abiotic primordial physicodynamic environment could have exercised such programming prowess.
Neither physics nor chemistry can dictate formal optimization, any more than physicality itself
generates the formal study of physicality. Human epistemological pursuits are formal enterprises of
agent minds. Natural process GAs have not been observed to exist. The GAs of living organisms are
just metaphysically presupposed to have originated through natural process. We can liberally employ
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GAs and so-called evolutionary algorithms for all sorts of productive tasks. But GAs cannot be used to
model spontaneous life origin through natural process because GAs are formal.
13. Order vs. Organization
Organization ≠ order. Disorganization ≠ disorder. Self-ordering of many kinds occurs
spontaneously every day in nature in the absence of any organization. Spontaneous bona fide selforganization, on the other hand, has never been observed.
“Self-organization” is logically a nonsense term. Inanimate objects cannot organize themselves into
integrated, cooperative, holistic schemes. Schemes are formal, not physical. To organize requires
choice contingency, not just chance contingency and law-like necessity. Sloppy definitions lead to
fallacious inferences, especially to category errors. Organization requires 1) decision nodes, 2) steering
toward a goal of formal function, 3) algorithmic optimization, 4) selective switch-setting to achieve
integration of a circuit, 5) choice with intent.
The only entity that logically could possibly be considered to organize itself is an agent. But not
even an agent self-organizes. Agents organize things and events in their lives. They do not organize
their own molecular biology, cellular structure, organs and organ systems. Agents do not organize their
own being. Agents do not create themselves. They merely make purposeful choices with the brains and
minds with which they find themselves. Artificial intelligence does not organize itself either. It is
invariably programmed by agents to respond in certain ways to various environmental challenges in
the artificial life data base.
Thus the reality of self-organization is highly suspect on logical and analytic grounds even before
facing the absence of empirical evidence of any spontaneous formal self-organization. Certainly no
prediction of bona fide self-organization from unaided physicodynamics has ever been fulfilled. Of
course if we fail through sloppy definitions to discern between self-ordering phenomena and
organization, we will think that evidence of self-organization is abundant. We will point to hundreds of
peer-reviewed papers with “self-organization” in their titles. But when all of these papers are carefully
critiqued with a proper scientific skepticism, our embarrassment only grows with each exposure of the
blatant artificial selection that was incorporated into each paper’s experimental design. Such
investigator involvement is usually readily apparent right within Materials and Methods of the paper.
14. What exactly is chaos?
Chaos is a bounded state of disorganization that is extremely sensitive to the effects of initial
conditions. Note that chaos is a disorganized state of matter, not a disordered state of matter. A
considerable amount of order can arise spontaneously out of chaos. This is what chaos theory is about.
Prigogine’s dissipative structures are rapid successions of momentarily self-ordered states. Chaos
theory deals with such spontaneously forming forms and order. All we have to do to observe
spontaneous self-ordering is to pull the stopper out of our bathtub drain. Water molecules quickly selforder into a swirl—a vortex—from purely physicodynamic complex causation. We mistakenly call
this self-organization. The vortex is not organized. It is only self-ordered [4]. What is the difference?
No decision nodes are required for a bathtub swirl to self-order out of seemingly random Brownian
movement. Proficient programming choices are not required for heat agitation of water molecules to
self-order into a vortex. No configurable switches have to be purposefully set, each in a certain way, to
achieve self-ordering. No pursuit of a goal is involved. No algorithmic optimization is required. In
addition, Prigogine’s dissipative structures do not DO anything formally productive. They possess no
ability to achieve computational halting.
Chaos is capable of producing incredibly complex physicodynamic behavior. But we must never
confuse this complexity with formal function. The shape of a candle flame is a spontaneously selfordered shape or form. It is a rapid succession of dissipative structures that creates the illusion of a
sustained structure. Order spontaneously appears out of disorder in the complete absence of any formal
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creative input or cybernetic management. But no algorithmic organization is produced by a candle
flame. The sustained shape of a candle flame is self-ordered. It is not self-organized [4].
The dissipative structures of Prigogine arise out of high-order cause-and-effect “necessity.” What
seems to be a totally random environment is in fact a caldron of complex interaction of multiple force
fields. The complexity of interactive causation can create the illusion of randomness, or of very real
self-ordering. There may also be as-of-yet undiscovered physical causes. But dissipative structures
self-order; they do NOT self-organize. The dissipative structures of chaos theory are unimaginative.
Highly ordered structures contain very little information. Information retention in any physical
medium requires freedom of selection of configurable switch settings. Switches must be “dynamically
inert” with respect to their function as decision nodes.
Dissipative structures are
1) highly ordered,
2) monotonous,
3) predictable,
4) regular (vortices, sand piles)
5) low informational
6) strings of momentary states
Dissipative structures are usually destructive, not cybernetically constructive (e.g., tornadoes,
hurricanes). Trying to use “chaos” and “complexity” to provide mechanism for “self-organization” is
like trying to use the Shannon transmission engineering to explain intuitive information, meaning and
function. Shannon’s equations define “surprisal” and “uncertainty,” not semantic information. Just as
we cannot explain and measure “intuitive information” using Shannon combinatorial uncertainty, we
cannot explain a truly organized system appealing to nothing but a mystical edge of chaos. Reduced
uncertainty (“mutual entropy”) in Shannon theory comes closer to semantic information, but only
because we mix in the formal elements of human knowledge. We measure the reduced uncertainty of
our knowledge. At that point, we are no longer talking about objective information in nature. We are
only talking about human epistemology. Human consciousness is highly subjective. The second we
insist on defining information solely in terms of a human observer, we have destroyed all hope of
elucidating the derivation of objective information in evolutionary history.
The disorganization of chaos is characterized by conceptual uncertainty and confusion.
Disorganization lacks sophisticated steering and control. Disorganization pursues no purpose. Even if
chaos had a purpose, it would lack all means of accomplishing that purpose. If chaos by definition is a
bounded state of disorganization, how could we possibly attribute self-organization to chaos? No
scientific basis exists for granting formal capabilities to chaos, complexity or catastrophe. None of
these three has ever been observed to produce formal integration and algorithmic organization of any
kind.
Scientists accomplish impressive feats using nonlinear dynamics. But our use of the phrase
“nonlinear dynamics” all-too-easily starts referring to chaos as though chaos itself were capable of
achieving formal function. We overlook the considerable degree of “investigator involvement” and
artificial steering that went into nonlinear dynamic experiments. Formal mathematics was invariably
employed by agents. No observers or knowers would exist were it not for a phenomenal amount of
objective information instructing each cell. A great deal more objective prescriptive information is
required to integrate cell systems, organs, organ systems, and holistic organisms. No observers or
knowers were around when bacteria were being prescribed and their initial instruction sets being
replicated and reproduced. Human observers are Johnny-come-lately discoverers of information.
Human epistemology is not an essential component of what objective genetic prescriptive information
is in nature.
Many scientists across a wide array of disciplines exercise a surprisingly blind faith in the amazing
formal capabilities of spontaneous molecular chaos and combinatorial complexity. Empirical and
rational support for this belief system is sorely lacking. Achieving sophisticated formal function
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consistently requires regulation and control. Control always emanates from choice contingency and
intentionality, not from spontaneous molecular chaos.
15. The Edge of Chaos
If chaos is inadequate to explain self-organization, what about “the Edge of Chaos?” [7, 8, 21, 22,
50-57, 198, 316-328] The edge of chaos is somehow much more appealing to us than just plain chaos.
The edge of chaos is more poetic. It is terribly-inviting. It offers much more mystical allure. The
question is, does the edge of chaos actually exist? If the edge of chaos is objectively real, what exactly
is it? Where in time/space can we find it, and what can it independently do? Is the edge of chaos even
scientifically addressable?
Let us first examine the potential interface of chaos with natural order—with the regularities of
nature described by the physical laws. Can “order” program configurable switches? If “order”
programmed configurable switches, they would all be programmed the same way. They would all be
set to “On’s,” OR. . . they would all be set to “Off’s.” Either way, the configurable switches would not
be formally programmed into any algorithmic function. No more creativity would exist at the interface
of bounded disorganization with forced order than in either single entity. No reason exists to expect
any increased cybernetic potential at the edge of chaos than squarely in the middle of chaos (bounded
disorganization). The fact that chaos is extremely sensitive to the effects of initial conditions adds no
formal attributes. The latter certainly increases its changeability and the number of bits of uncertainty
in the bounded state. But mere changeability and combinatorial uncertainty provide no optimization of
formal function.
What about the interface of the bounded state of disorganization with heat agitation and Brownian
movement? Maximum complexity would set all configurable switches randomly. What synergistic
capabilities could emerge from the interface of disorganization with randomness? The two are not
synonymous. But neither contributes anything to programming proficiency.
What scientific substance does the edge of chaos provide? What empirical support do we have of
formal function arising spontaneously from the interface of chaos with chance OR necessity? What is
the logic behind such anticipation? What empirical support do we have for the computational
proficiency of the edge of chaos? Have we had any prediction fulfillments since it was first described
in 1992 by Waldrop [50]? Is the notion of vast formal capabilities arising from the edge of chaos
falsifiable? One has to wonder if the notion is worthy of serious discussion in a peer-reviewed science
journal paper. It would not be were it not for the fact that so many peer-reviewed papers already cite
this nebulous dream as an objective source of self-organization.
16. Systems theory
Systems theory in the literature regularly presupposes the metaphysical belief of physicodynamic
self-organization into formal function. One would think that systems theorists could readily offer a
crystal-clear definition of “system.” Sadly, this is not the case. It is not surprising, therefore, that chaos
and such phenomena as weather fronts are referred to as systems with no eyebrows raised. Bona fide
systems require organizational controls. True systems are cybernetic. Weather fronts are at best selfordered by complex degrees of interactive physicodynamic causation. They are not formally controlled
or organized to achieve sophisticated utility of any kind. A weather front is a physicodynamic interface
complete with criticality and phase changes. It may become a highly self-ordered tornado or a
hurricane. But it’s not a true system because it is not formally organized or cybernetically
programmed. No representational symbol system is used. No abstract conceptualizations are employed
by weather fronts. They are simply physicodynamic interfaces totally lacking in algorithmic
organization. We simply “murder the King’s English” by referring to a weather front as a system.
Such sloppy word usage leads to a great deal of confusion in understanding fundamental physics, the
temporary and local circumvention of the 2nd Law, and the algorithmic processes that alone make the
latter possible.
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Chaos is neither organized nor a true system, let alone “self-organized.” As pointed out above,
organization is not the same as order. A bona fide system requires organization. Chaos by definition
lacks organization. That’s why we call it “chaos” even though it manifests extensive self-ordering
tendencies. What could possibly be more self-ordered than a massive hurricane? But what formal
functions does it perform? A hurricane doesn’t DO anything constructive or formally functional
because it contains no formal organizational components. It has no programming talents or creative
instincts. A hurricane is not a participant in Decision Theory. A hurricane does not set logic gates
according to arbitrary rules of inference. A hurricane has no specifically designed dynamicallydecoupled configurable switches. No means exists to instantiate formal choices or function into
physicality. A highly self-ordered hurricane does nothing but destroy organization. To call a hurricane
“self-organized” constitutes one of the most egregious errors in science stemming from sloppy
definitions, category errors, and non sequiturs.
In itself, chaos is NOT a
1) Calculus.
2) Algorithm.
3) Program that achieves computational halting.
4) Organizer of formal function.
5) A bona fide system.
Complexity is not a system, either, as we saw in the highly complex pile of pick-up sticks (Figure
2). No programming is involved. No algorithms are optimized. No steering toward formal function
occurs. A true system requires organization.
In physics, no empirical evidence exists, not even an anecdotal account, of Chaos, Catastrophe,
maximum Complexity, order or pattern ever having produced sophisticated algorithmic function or
cybernetic organization of any kind. A pulsar signal has abundant order and pattern. But it doesn’t DO
anything useful. It contains no meaningful or functional message. It knows nothing of decision nodes
or choice contingency.
In biology, no rational or empirical justification exists for attributing linear, digital, encrypted,
genetic recipes to stochastic ensembles OR to physical laws in any amount of time. Yet thousands of
peer-reviewed papers exist in the literature on “self-organization.” How can denial of self-organization
possibly be correct? The answer is that all of these papers are universally misdefining what is being
observed. Self-ordering phenomena are being observed, not self-organization. But self-ordering
phenomena do not measure up to the task of genetic programming.
17. Formalism vs. Physicality
When it comes to life-origin studies, we have to address how symbol selection in the genetic
material symbol system came about objectively in nature [2]. Life origin science must address the
derivation of objective organization and control in the first protocells. How did prescriptive
information and control arise spontaneously out of the chaos of a Big Bang explosion, primordial
slime, vent interfaces in the ocean floor, or mere tide pools?
Self-ordering phenomena arise spontaneously out of phase space, but we have no evidence
whatsoever of formal organization arising spontaneously out of physical chaos or self-ordering
phenomena. Chance and necessity has not been shown to generate the choice contingency required to
program computational halting, algorithmic optimization, or sophisticated function.
If chance and necessity, order and complexity cannot produce formal function, what does? Selection
for potential utility is what optimizes algorithms, not randomness (maximum complexity), and not
fixed law (highly patterned, unimaginative, redundant order). Utility lies in a third dimension
imperceptible to chance and necessity. What provides this third dimension is when each token in a
linear digital programming string is arbitrarily (non physicodynamically, formally) selected for
potential function. The string becomes a cybernetic program capable of computation only when
signs/symbols/tokens are arbitrarily chosen from an alphabet to represent utilitarian configurable
Int. J. Mol. Sci. 2009, 10
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switch settings. The choice represented by that symbol can then be instantiated into physicality using a
dynamically inert (physicodynamically decoupled or incoherent) [196, 197, 329] configurable switch
setting. At the moment the switch knob seen in Figure 4 is pushed, nonphysical formalism is
instantiated into physicality. Then and only then does algorithmic programming become a physical
reality. Once instantiated, we easily forget the requirement of instantiation of formal instructions and
controls into the physical system to achieve engineering function. It was the formal voluntary pushing
of the configurable switch knob in a certain direction that alone organized physicality [1, 3, 4, 7-9, 12].
Degrees of integration are achieved through a combination of binary configurable switch-settings.
The selection of any combination of multiple switch settings to achieve degrees of organization is
called programming. But purposefully flipping the very first binary configurable switch is the
foundation and first step of any form of programming. Programming requires choice contingency. The
measure of algorithmic compression requires an added dimension. Only this extra dimension allows us
to place a sequence on the unidimensional vector graph showing varying degrees of order and
complexity (Fig 1). No known natural process spontaneously compresses an informational message
string. As Howard Pattee has repeatedly pointed out, any type of measurement is a formal function that
cannot be reduced to physicodynamics [161, 314, 330, 331]. We do not plug initial conditions into the
formal equations known as “the laws of physics.” We plug symbolic representations of those initial
conditions into the laws of physics. Then we do formal mathematical manipulations of these equations
to reliably predict physicodynamic interactions and outcomes. In this sense formalism governs
physicality. The role that mathematics plays in physics is alone sufficient to argue for formalism’s
transcendence over physicality.
Just as it takes an additional dimension to measure the algorithmic compressibility of a sequence, it
takes still another dimension to measure the formal utility of any sequence. Formalisms are abstract,
conceptual, representational, algorithmic, choice-contingent, non physical activities of mind.
Formalisms typically involve steering toward utility. Formalisms employ controls rather than mere
physicodynamic constraints. Formalisms require obedience to arbitrarily prescribed rules rather than
forced laws. Physicodynamics cannot visualize, let alone quantify formal utility.
Formalisms cannot be produced by chance or necessity. Language, for example, uses arbitrary
symbol selections from an alphabet of options. Logic theory uses rules, not laws, to judge inferences.
Programming requires choice contingency at each decision node. Each logic gate and configurable
switch must be deliberately set a certain way to achieve potential (not-yet-existent) computational
halting. These are all formal functions, not spontaneous physicodynamic events. They are just as
formal as mathematics. Decision nodes, logic gates, and configurable switches cannot be set by chance
and/or necessity if sophisticated formal utility is expected to arise. They must be set with the intent to
control and to program computational halting. Acknowledgement of the reality of formal controls was
growing within the molecular biological community even prior to the now weekly new discoveries of
extraordinarily sophisticated cybernetic mechanisms in cellular physiology [332].
18. The Cybernetic Cut
Formal function can invariably be traced back to the exercise of some form of decision theory.
Achieving formal utility requires crossing The Cybernetic Cut [9]. The Cybernetic Cut is perhaps the
most fundamental divide of scientifically addressable reality. A monstrous ravine runs through
presumed objective reality. It is the great divide between physicality and formalism. On the one side
of this Grand Canyon lies everything that can be explained by the chance and necessity of
physicodynamics. On the other side lies those phenomena than can only be explained by formal choice
contingency and decision theory—the ability to choose with intent what aspects of ontological being
will be preferred, pursued, selected, rearranged, integrated, organized, preserved, and used. Physical
dynamics includes spontaneous non linear phenomena, but not our formal applied-science called “non
linear dynamics.”
A configurable-switch (CS) Bridge traverses this great chasm. But this CS Bridge conveys one-way
traffic only. Prescriptive information flows only from the formal side to the physical side of the
Int. J. Mol. Sci. 2009, 10
25
ravine. Programming decisions can be instantiated into physical configurable switch settings. But
physicality contributes no formal influence on those choices in reverse direction. The choices that set
the physical configurable switches are themselves non physical. Physicodynamic forces have no
influence upon non physical formalisms. Physicodynamics (the chance and necessity of physicality)
cannot steer events toward computational halting.
Falsification of The Cybernetic Cut requires nothing more than demonstrating a single incident of
two-way traffic across the CS Bridge. Thus far, no such incident of two-way traffic has even been
observed. Logically, the chance and necessity of physicality cannot make purposeful choices (e.g.,
programming decisions). Physicality cannot plot and scheme. Physicality cannot prefer utility over
non utility. It cannot even categorize formal function from non function. Stand-alone physicodynamics
is blind to utility, and could care less whether anything “works” in a formal sense.
This is not to say that formalisms cannot employ elements of chance and/or physicodynamic
determinism. Every day architects and engineers work around, depend upon, and deliberately employ
the orderliness of physicodynamics. When we play the card game of poker, we incorporate stochastic
reality and physical constraints into our formal scheming. These facts in no way threaten the reality of
The Cybernetic Cut.
The Cybernetic Cut is logically, not empirically, absolute. Science does not expect induction to be
absolute. But within any axiomatic deductive system, when the rules of inference are carefully adhered
to, we have every right to draw as firm a conclusion as we do when predicting physical interactions
with any mathematical law of physics. If the predictions fail, we have reason to question our initial
axiomatic presuppositions. Thus far, we have no reason or empirical evidence that would cause us to
doubt the axiom of The Cybernetic Cut and the one-way traffic across its CS Bridge.
In those fields relating to non linear dynamics, we tend to point to chaos theory, complexity theory,
fractals, rugged fitness landscapes, Markov chains, evolutionary algorithms, and directed evolution as
evidence for the self-organization of physicality. In reality, all of these fields and models serve only to
reinforce the reality of The Cybernetic Cut. Investigator involvement (various forms of artificial
selection, not natural selection) is readily identifiable in hundreds of these published experimental
designs. A classic example is the body of published ribozyme engineering experiments [333-335].
Take away the experimenter’s purposeful choosing of which iteration to pursue, and the desired
ribozyme devolves every time toward either a non functional stochastic ensemble, or a self-ordered
polymer such as a polyadenosine that also does nothing useful. Neither chance nor necessity can
program the needed ribozyme.
19. Conclusions
The capabilities of stand-alone chaos, complexity, self-ordered states, natural attractors, fractals,
drunken walks, complex adaptive systems, and other subjects of non linear dynamic models are often
inflated. Scientific mechanism must be provided for how purely physicodynamic phenomena can
program decision nodes, optimize algorithms, set configurable switches so as to achieve integrated
circuits, achieve computational halting, and organize otherwise unrelated chemical reactions into a
protometabolism. To focus the scientific community’s attention on its own tendencies toward overzealous metaphysical imagination bordering on “wish-fulfillment,” we propose the following readily
falsifiable null hypothesis, and invite rigorous experimental attempts to falsify it:
“Physicodynamics cannot spontaneously traverse The Cybernetic Cut [9]: physicodynamics alone
cannot organize itself into formally functional systems requiring algorithmic optimization,
computational halting, and circuit integration.”
A single exception of non trivial, unaided spontaneous optimization of formal function by truly
natural process would falsify this null hypothesis.
Int. J. Mol. Sci. 2009, 10
26
Acknowledgements
This work was supported by a grant from The Origin of Life Science Foundation, Inc. Many thanks
to Kirk Durston and David Chiu at the University of Guelph for their willingness to share their
impressive experimental data.
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