1. Introduction
The Kilbas-Saigo function is a three-parameter entire function with the convergent series representation
where the parameters are such that
and
It can be viewed as a generalization of the one- or two-parameter Mittag–Leffler function since, with standard notations,
and
for every
and
This function was introduced in [
1] as the solution to some integro-differential equation with Abelian kernel on the half-line, and we refer to Chapter 5.2 in [
2] for a more recent account, including an extension to complex values of the parameter
In our previous paper [
3], written in collaboration with P. Vallois, it was shown that certain Kilbas-Saigo functions are moment generating functions of Riemannian integrals of the stable subordinator. This observation made it possible to define rigorously some Weibull and Fréchet distributions of fractional type via an independent exponential random variable and the stable subordinator—see [
3] for details. In the present paper, we wish to take the other way round and use the probabilistic connection to deduce some non-trivial analytical properties of the Kilbas-Saigo function.
In
Section 2, we tackle the problem of the complete monotonicity on the negative half-line. This problem dates to Pollard in 1948 for the one-parameter Mittag–Leffler function—see e.g., Section 3.7.2 in [
2] for details and references. It was shown in [
3] that for every
and
the function
is completely monotone, extending Pollard’s result and solving an open problem stated in [
4]. In Theorem 1 below, we characterize the complete monotonicity of
by
and
We also give an explicit representation, albeit complicated in general, of the underlying positive random variable. Along the way, we study an interesting family of Mellin transforms given as the quotient of four double Gamma functions.
In
Section 3, we establish uniform hyperbolic bounds on the negative half-line for two families of completely monotonic Kilbas-Saigo functions, extending the bounds obtained in [
5] for the classical Mittag–Leffler function. The argument in [
5] relied on stochastic and convex orderings and was rather lengthy. We use here the same kind of arguments, but the proof is shorter and more transparent thanks to the connection with the stable subordinator; which also enables us to derive some monotonicity properties on
for every
—see Proposition 1 below.
In
Section 4, we address the question of the asymptotic behavior at
in the completely monotonic case
and
It is shown in Theorem 5.5 of [
2] that in the general case
and
the entire function
has order
and type
However, precise asymptotics along given directions of the complex plane do not seem to have been investigated as yet, as is the case—see e.g., Proposition 3.6 in [
2] for the classical Mittag–Leffler function. For the negative half-line and
, the asymptotics are different depending on whether
or
In the former case, the behavior is in
with a non-trivial constant
obtained from the connection with the fractional Fréchet distribution and given in terms of the double Gamma function—see Proposition 7 and Remark 8 (c) below. In the latter case, the behavior is in
with a uniform speed and a simple constant
given in terms of the standard Gamma function—see Proposition 6 below. The method for the case
relies on the computation of the Mellin transform of the positive function
which is obtained from the proof of its complete monotonicity, and is interesting in its own right—see Remark 2 (c) below. Along the way, we provide the exact asymptotics of the fractional Weibull and Fréchet densities at both ends of their support and we give a series of probabilistic factorizations. The latter enhance the position of the fractional Fréchet distribution, which is in one-to-one correspondence with the boundary Kilbas-Saigo function
as an irreducible factor—see Remark 8 (a) below.
In the last
Section 5, we pay attention to the so-called Le Roy function with parameter
This is a simple generalization of the exponential function defined by
Introduced in [
6] in the context of analytic continuation, a couple of years before the Mittag–Leffler function, the Le Roy function has been much less studied. It was shown in [
3] that this function encodes for
a Gumbel distribution of fractional type, as the moment generating function of the perpetuity of the
stable subordinator. This fact is recalled in Proposition 9 below, together with a characterization of the moment generating property. The exact asymptotic behavior at
is also derived for
completing the original result of Le Roy. Finally, the non-increasing character of
on
for every
is established by convex ordering. It is worth mentioning that this property is an open problem—see Conjecture 5 below-for the Mittag–Leffler function.
As in [
3], an important role is played throughout the paper by Barnes’ double Gamma function
which is the unique solution to the functional equation
with normalization
and its associated Pochhammer type symbol
We have gathered in
Appendix A all the needed facts and formulæ on this double Gamma function, whose connection with the Kilbas-Saigo function has probably a broader focus than the content of the present paper (we leave this topic open to further research).
2. Complete Monotonicity on the Negative Half-Line
In this section, we wish to characterize the property that the function
is completely monotone (CM) on
We begin with the following result on the above generalized Pochhammer symbols, which is reminiscent of Proposition 5.1 and Theorem 6.2 in [
7] and has an independent interest.
Lemma 1. Let and δ be positive parameters. There exists a positive random variable such thatfor every if and only if and This random variable is absolutely continuous on , except in the degenerate case Its support is if and if Proof of Lemma 1.
We giscard the degenerate case
which is obvious with
By (
A2) and some rearrangements—see also (2.15) in [
8], we first rewrite
for every
where
is some real constant. By convexity, it is easy to see that if
and
then the function
is positive on
This implies that the function
is positive on
and that it can be viewed as the density of some Lévy measure on
since it integrates
By the Lévy–Khintchine formula, there exists a real infinitely divisible random variable
Y such that
for every
and the positive random variable
satisfies (
1). Since we have excluded the degenerate case, the Lévy measure of
Y is clearly infinite and it follows from Theorem 27.7 in [
9] that
Y has a density and the same is true for
Assuming first
a Taylor expansion at zero shows that the density of the Lévy measure of
Y integrates
and we deduce from (
A2) the simpler formula
By the Lévy–Khintchine formula, this shows that the ID random variable
Y is negative. Moreover, its support is
since its Lévy measure has full support and its drift coefficient is zero—see Theorem 24.10 (iii) in [
9], so that the support of
Z is
Assuming second
the same Taylor expansion as above shows that the density of the Lévy measure of
Y does not integrate
and the real Lévy process associated with
Y is thus of type C using the terminology of [
9]—see Definition 11.9 therein. By Theorem 24.10 (i) in [
9], this implies that
Y has full support on
and so does
Z on
It remains to prove the only if part of the Lemma. Assuming
and
without loss of generality, we first observe that if
then the function
is real-analytic on
and vanishes at
an impossible property for the Mellin transform of a positive random variable. The necessity of
is slightly more subtle and hinges again upon infinite divisibility. First, setting
and
it is easy to see by convexity and a Taylor expansion at 1 that if
then
and
on
with
as
Introducing next the ID random variable
V with Laplace exponent
we obtain the decomposition
whose right-hand side is the Laplace exponent of some ID random variable
U with an atom because its Lévy measure, whose support is bounded away from zero, is finite—see Theorem 27.4 in [
9]. On the other hand, the random variable
V has an absolutely continuous and infinite Lévy measure and hence it has also a density. If there existed
Z such that (
1) holds, then the independent decomposition
would imply by convolution that
U has a density as well. This contradiction finishes the proof of the Lemma. □
Remark 1. (a) By the Mellin inversion formula, the density of is expressed asover for any From this expression, it is possible to prove that this density is real-analytic over the interior of the support. We omit details. Let us also mention by Remark 28.8 in [9] that this density is positive over the interior of its support. (b) With the standard notation for the Pochhammer symbol, the aforementioned Proposition 5.1 and Theorem 6.2 in [7] show that is the Mellin transform of a positive random variable if and only if and This fact can be proved exactly as above, in writing This expression also shows that the underlying random variable has support and that it is absolutely continuous, save for where it has an atom at zero. We refer to [7] for an exact expression of the density on in terms of the classical hypergeometric function. We can now characterize the CM property for on
Theorem 1. Let and The Kilbas-Saigo function is CM
on if and only if and Its Bernstein representation is with and
Proof of Theorem 1. Assume first
and
and let
By Proposition 2.4 in [
8], and Lemma 1, its Mellin transform is
where in the second equality we have used (
A9). By Fubini’s theorem, the moment generating function of
reads
for every
where in the third equality we have used (
A1) repeatedly. The latter identity is extended analytically to the whole complex plane and we get, in particular,
This shows that is CM with the required Bernstein representation.
We now prove the only if part. If
is CM, then we see by analytic continuation that
is the moment generating function on
of the underlying random variable
whose positive integer moments read
If
Stirling’s formula implies
as
so that
a contradiction because
is not a constant. If
and
then
with
In particular, the Mellin transform
is analytic on
bounded on
and has at most exponential growth on
because
by Hölder’s inequality. On the other hand, the Stirling type Formula (
A4) implies, after some simplifications,
and this shows that the function on the left-hand side, which is analytic on
has at most linear growth on
and at most exponential growth on
Moreover, the above analysis clearly shows that
for all
and by Carlson’s theorem—see e.g., Section 5.81 in [
10], we must have
for every
a contradiction since Lemma 1 shows that the right-hand side cannot be the Mellin transform of a positive random variable if
The case
and
is analogous. It consists of identifying the bounded sequence
as the values at non-negative integer points of the function
where the purposeless constant
can be evaluated from (
A4). On
we see that this function has growth at most
and we can again apply Carlson’s theorem. We leave the details to the interested reader. □
Remark 2. (a) When applying (A1) we see that the random variable has Mellin transformwith This shows where denotes, here and throughout, a standard Beta random variable with parameters We hence recover the Bernstein representation of the CM function which was discussed in Remark 3.3 (c) in [3]. Notice also the very simple expression of the Mellin transform (b) Another simplification occurs when for some integer One findsfor which implies In general, the law of the absolutely continuous random variable valued in seems to have a complicated expression.
(c) As seen during the proof, the random variable defined by the Bernstein representation has Mellin transformwith for every By Fubini’s theorem, this implies the following exact computation, which seems unnoticed in the literature on the Kilbas-Saigo function.for every For we recover from (A1) the formulawhich is given in (4.10.3) of [2], as a consequence of the Mellin-Barnes representation of Notice that there is no such Mellin-Barnes representation for in general. 3. Uniform Hyperbolic Bounds
In Theorem 4 of [
5], the following uniform hyperbolic bounds are obtained for the classical Mittag–Leffler function:
for every
and
The constants in these inequalities are optimal because of the asymptotic behaviors
See [
11] and the references therein for some motivations on these hyperbolic bounds. In this section, we shall obtain analogous bounds for
and
with
Those peculiar functions are associated with the fractional Weibull and Fréchet distributions defined in [
3]. Specifically, we will use the following representations as a moment generating function, obtained respectively in (3.1) and (3.4) therein:
and
for every
where
is the
stable subordinator normalized such that
Observe that these two formulæ specify the general Bernstein representation (
2) in terms of the
stable subordinator only. We begin with the following monotonicity properties, of independent interest.
Proposition 1. Fix and The functionsare decreasing on if and increasing on if Proof of Proposition 1. This follows from (
6) resp. (
7), and the fact that
for every
□
Remark 3. It would be interesting to know if the same property holds for and any In the case this would require from (2) a monotonicity analysis of the mapping which does not seem easy at first sight. As in [
5], our analysis to obtain the uniform bounds will use some notions of stochastic ordering. Recall that if
are real random variables such that
for every
convex, then
Y is said to dominate
X for the convex order, a property which we denote by
Another ingredient in the proof is the following infinite independent product
We refer to Section 2.1 in [
8] for more details on this infinite product, including the fact that it is a.s. convergent for every
We also mention from Proposition 2 in [
8] that its Mellin transform is
for every
The following simple result on convex orderings for the above infinite independent products has an independent interest.
Lemma 2. For every and one has Proof of Lemma 2.
By the definition of
and the stability of the convex order by mixtures—see Corollary 3.A.22 in [
12], it is enough to show
for every
and
Using again Corollary 3.A.22 in [
12] and the standard identity
we are reduced to show
which is a consequence of Jensen’s inequality. □
The following result is a generalization of the inequalities (
5), which deal with the case
only, to all Kilbas-Saigo functions
The argument is considerably simpler than in the original proof of (
5).
Theorem 2. For every and one has Proof of Theorem 2. The first inequality is a consequence of Proposition 1, which implies in letting
for
where the first equality follows from Theorem 1.2 (b) (ii) in [
8]. For the second inequality, we come back to the infinite product representation
which follows from Theorem 1.2 (b) (i) in [
8], exactly as in the proof of Theorem 1.1 in [
3]. Lemma 2 implies then
where the identity in law follows from (2.7) in [
8]. Using (
6) with
and the convexity of
, we obtain the required
□
Remark 4. (a) As for the classical case , these bounds are optimal because of the asymptotic behaviors The behavior at zero is plain from the definition, whereas the behavior at infinity will be given after Remark 6 below.
(b) It is easy to check that the above proof also yields the upper boundfor every and which seems unnoticed even in the classical case Our next result is a uniform hyperbolic upper bound for the Kilbas-Saigo function
with a power exponent which will be shown to be optimal in Remark 8 (c) below, and also an optimal constant because
Proposition 2. For every and one has Proof of Proposition 2. The inequality is derived by convex ordering as in Theorem 2: setting, here and throughout,
for a Gamma random variable with parameter
one has
where the first identity follows from Corollary 3 in [
8] as in the proof of Theorem 1.1 in [
3], the convex ordering from Lemma 2 and the second identity from (2.7) in [
8]. Then, using (
7) with
we get the required inequality. □
As in Theorem 2, we believe that there is also a uniform lower bound, with a more complicated optimal constant which can be read off from the asymptotic behavior of the density at zero obtained in Proposition 7 below:
Conjecture 3. For every and one has Unfortunately, the proof of this general inequality still eludes us. The monotonicity property observed in Proposition 1 does not help here, giving only the trivial lower bound zero. The discrete factorizations which are used in [
5] are also more difficult to handle in this context, because the Mellin transform underlying
is expressed in terms of generalized Pochhammer symbols. In the case
we could however get a proof of (
8). The argument relies on the following representation, observed in Remarks 3.1 (d) and 3.3 (c) of [
3]:
for every
where
is the first-passage time above one of the
stable subordinator and
its usual size-bias of order one.
Proposition 3. For every and one has Proof of Proposition 3. By (
9) and since
for every
it is enough to show, reasoning exactly as in the proof of Theorem 4 in [
5], that
where
stands for the usual stochastic order between two real random variables. Recall that
means
for every
Since
the case
is explicit and the stochastic ordering can be obtained directly. More precisely, the densities of both random variables in (
10) are respectively given by
on
where they cross only once at
It is a well-known and an easy result that this single intersection property yields (
10)—see Theorem 1.A.12 in [
12].
The argument for the case
is somehow analogous, but the details are more elaborate because the density of
is not explicit anymore. We proceed as in Theorem C of [
5] and first consider the case where
is rational. Setting
with
positive integers and
we have, on the one hand,
for every
where we have used the well-known identity
in the second equality, whereas in the third equality we have used repeatedly the Legendre-Gauss multiplication formula for the Gamma function—see e.g., Theorem 1.5.2 in [
13]. The same formula implies, on the other hand,
for every
with the notation
Since
for every
by factorization and Theorem 1.A.3 (d) in [
5] we are finally reduced to show
for every
positive integers. The above inequality is equivalent to
and this is proved via the single intersection property exactly as for (5.1) in [
5]: the random variable on the left-hand side has an increasing density on
whereas the random variable on the right-hand side has a decreasing density on
both densities having the same positive finite value at zero. We omit details. This completes the proof of (
10) when
is rational. The case when
is irrational follows then by a density argument. □
Remark 5. It is easy to check from (A5) and (A6) thatso that Proposition 3 leads to (8) for in accordance with the estimate (13). In general, the absence of a tractable complement formula for the product makes however the constant in (8) more difficult to handle. Our last result in this section gives optimal uniform hyperbolic bounds for the generalized Mittag–Leffler functions
whenever they are completely monotone, that is for
—see the above Remark 2 (a). This can be viewed as another generalization of (
5).
Proposition 4. For every and one has Proof of Proposition 4. The bounds for
are a direct consequence of (
9), Proposition 2 and Proposition 3. Notice that letting
leads to the trivial bound
To handle the bounds for
we first recall from Remark 2 (a) that
with
and
Moreover, one has
for every
which implies the factorization
Since, by Jensen’s inequality,
we deduce from Corollary 3.A.22 in [
12] the convex ordering
which, as above, implies
for every
The argument for the other inequality is analogous to that of Proposition 3. By density, we only need to consider the case
and
with
and
q positive integers. By (
11) and the Legendre-Gauss multiplication formula, we obtain
for every
On the other hand, one has
with
Comparing these two formulæ we are reduced to show
for every
and
q positive integers. This is obtained in the same way as above via the single intersection property. We leave the details to the reader. □
4. Asymptotic Behavior of Fractional Extreme Densities
In this section, which is a complement to [
3], we study the behavior of the density functions of the fractional Weibull and Fréchet distributions at both ends of their support. To this end, we also evaluate their Mellin transforms in terms of Barnes’ double Gamma function. Along the way, we give the exact asymptotics of
on the negative half-line, in the completely monotonic case
and
4.1. The Fractional Weibull Case
In [
3], a fractional Weibull distribution function with parameters
and
is defined as the unique distribution function
on
solving the fractional differential equation
where
denotes the associated survival function and
a progressive Liouville fractional derivative on
The case
corresponds to the standard Weibull distribution. In [
3], it is shown that this distribution function exists and is given by
for every
—see the formula following (3.1) in [
3]. In particular, the density
is real-analytic on
and has the following asymptotic behavior at zero:
The behavior of at infinity is however less immediate, and to this aim we will need an exact expression for the Mellin transform of the random variable with distribution function which has an interest in itself.
Proposition 5. The Mellin transform of isfor every Consequently, one has Proof of Proposition 5. We start with a more concise expression of (
3) for
which is a direct consequence of (
A9):
By Theorem 1.1 in [
3] and using the notations therein, we deduce
for every
as required, where the third equality comes from (
A8). The asymptotic behavior of the density at infinity is then a standard consequence of Mellin inversion. First, we observe from the above formula and (
A10) that the first positive pole of
is simple and isolated in the complex plane at
with
as
where the second asymptotics comes from (
A9) and the equality from (
A5). Therefore, applying Theorem 4 (ii) in [
14] beware the correction
to be made in the expansion of
therein, we obtain
as required. □
Remark 6. (a) Another proof of the asymptotic behavior at infinity can be obtained from that of the so-called generalized stable densities. More precisely, using the identity in law on top of p.12 in [3] and the notation therein, we see by multiplicative convolution, having set for the density of the generalized stable random variable thatas where for the asymptotics we have used the Proposition in [15] and a direct integration. This argument does not make use of Mellin inversion and is overall simpler than the above. However, it does not convey to the fractional Fréchet case. (b) The Mellin transform simplifies for and : using (A1) and (A6) we recoverin accordance with the scaling property and the identities given at the bottom of p.3 in [3]. The Mellin transform takes a simpler form in two other situations. For we obtain from (3), (A1) and (A5) in accordance with Remark 3.1 (d) in [3]. This yields an identity which was already discussed for in the introduction of [3] as the solution to (1.3) therein. The Mellin transform reads For where we obtain from (A5)
(c) The two cases and have a Mellin transform expressed as the quotient of a finite number of Gamma functions. This makes it possible to use a Mellin-Barnes representation of the density to get its full asymptotic expansion at infinity. Using the standard notation of Definition C.1.1 in [13], one obtainswhich are everywhere divergent. The first expansion can also be obtained from (1.8.28) in [16] using Unfortunately, the Mellin transform of might have poles of variable order and it seems difficult to obtain a general formula for the full asymptotic expansion at infinity of .
Writing
we obtain by integration the following asymptotic behavior at infinity, which is valid for any
and
:
This behavior, which turns out to be the same as that of the classical Mittag–Leffler function
—see e.g., (3.4.15) in [
2], gives the reason the constant in the lower bound of Theorem 2 is optimal—see the above Remark 4 (a). It is actually possible to get the exact behavior of
at infinity for any
and
We include this result here since it seems unnoticed in the literature on Kilbas-Saigo functions.
Proposition 6. For any and one has Proof of Proposition 6. The case
is obvious since
For
setting
recall from (
4) that for every
one has
as
where in the equality we have used the concatenation formula (
A1). The asymptotic behavior follows then by Mellin inversion as in the proof of Proposition 5. □
Remark 7. In the boundary case the behavior of at infinity, which has different speed and a more complicated constant, will be obtained with the help of the fractional Fréchet distribution—see Remark 8 (c) below.
We end this paragraph with the following conjecture which is natural in view of Proposition 6. We know by Theorem 2 resp. Proposition 4 that this conjecture is true for the cases and
Conjecture 4. For every and one has 4.2. The Fréchet Case
In [
3], a fractional Fréchet distribution function with parameters
and λ,
is defined as the unique distribution function
on
solving the fractional differential equation
where
denotes a regressive Liouville fractional derivative on
The case
corresponds to the standard Fréchet distribution. In [
3], it is shown that this distribution function exists and is given by
for every
—see the formula following (3.4) in [
3]. In particular, the density
is real-analytic on
and has the following asymptotic behavior at infinity:
The behavior of the density at zero is less immediate and we will need, as in the above paragraph, the exact expression of the Mellin transform of the random variable with distribution function whose strip of analyticity is larger than that of
Proposition 7. The Mellin transform of isfor every Consequently, one has Proof of Proposition 7. The evaluation of the Mellin transform is done as for the fractional Weibull distribution, starting from the expression
which is a consequence of (
3) and (
A5). By Theorem 1.2 in [
3] and (
A8), we obtain the required formula
Then the asymptotic behavior of
at zero follows as that of
at infinity, in considering the residue at the first negative pole
which is simple and isolated in the complex plane, applying Theorem 4 (i) in [
14] with the same correction as above, and making various simplifications. We omit details. □
Remark 8. (a) Comparing the Mellin transforms, Propositions 5 and 7 imply the factorization In general, it follows from Theorem 1 that for every and there exists a positive random variable with distribution function and which is given by (3), (2) and Theorem 1.2 in [3] as the independent productwhere the identity in law follows from (A8). In this respect, the fractional Fréchet distributions can be viewed as the “ground state” distributions associated with the Kilbas-Saigo functions in the boundary case (b) As above, the Mellin transform simplifies for : we getin accordance with the scaling property and the identities given after the statement of Theorem 1.2 in [3]. The Mellin transform also takes a simpler form in the same other situations as above. This yields the identity which was discussed for in the introduction of [3] as the solution to (1.4) therein. This is also in accordance with Remark 3.3 (c) in [3], since Notice that the constant appearing in the asymptotic behavior of the density at zero is also simpler: one finds Here, the density converges at zero to a simple constant: one finds
(c) Integrating the density and using we obtain the following asymptotic behavior at infinity for any and which is more involved than that of Proposition 6: For this behavior matches the first term in the full asymptotic expansion As for a full asymptotic expansion of at infinity seems difficult to obtain for all values of
5. Some Complements on the Le Roy Function
In this section, we show some miscellaneous results on the Le Roy function
In [
3], this function played a role in the construction of a fractional Gumbel distribution—see Theorem 1.3 therein. The Le Roy function, which has been much less studied than the classical Mittag–Leffler function, can be viewed as an alternative generalization of the exponential function. See also the recent paper [
17] for a further generalization related to the Mittag–Leffler function. Throughout, we giscard the explicit case
We begin with the asymptotic behavior at infinity. Le Roy’s original result—see [
6] p. 263-reads
and is obtained by a variation of Laplace’s method. An extension of this asymptotic behavior has been given in [
18] for the so-called Mittag–Leffler functions of Le Roy type. Laplace’s method can also be used to solve Exercise 8.8.4 in [
19], which states
for
and
for
as
The following estimate, which seems to have passed unnoticed in the literature, completes the picture.
Proposition 8. For every one has Proof of Proposition 8. In the proof of Theorem 1.3 in [
3] it is shown that
where
has density
on
and Mellin transform
In particular, using the notation in [
20], we have
, and Theorem 2.4 therein implies
Plugging this estimate into the above expression of we conclude the proof by a direct integration. □
Remark 9. (a) The estimate (16) also gives the asymptotic behavior, at the right end of the support, of the density of the fractional Gumbel random variable which is defined in Theorem 1.3 of [3]. Indeed, by the definition and multiplicative convolution the density of on writeswhere the estimate follows from (16) as in the proof of Proposition 8. A change of variable implies then Notice that at the left end of the support, there is a convergent series representation which is given by Corollary 3.6 in [3]. (b) In the case one has and for all where and are the classical Bessel functions with index 0. In particular, a full asymptotic expansion for at both ends of the support is available, to be deduced e.g., from (4.8.5) and (4.12.7) in [13]. These expansions also exist when α is an integer since is then a generalized Wright function—see Chapter F.2.3 in [2] and the original articles by Wright quoted therein. The case when α is not an integer does not seem to have been investigated, and might be technical in the absence of a true Mellin-Barnes representation. Our next result characterizes the connection between the entire function
and random variables. Recall that a function
which is holomorphic in a neighborhood Ω of the origin is a moment generating function (MGF) if there exists a real random variable X such that
In particular, it is clear that is the MGF of the exponential law and that of the constant variable The following provides a characterization.
Proposition 9. The function is the MGF
of a real random variable if and only if In this case, one has Proof of Proposition 9. The if part is a direct consequence of the proof of Proposition 8. On the other hand, the estimates (
14) and (
15) show that
takes negative values on
so that it cannot be the moment generating function of a real random variable, when
This completes the proof. □
Observe that since
is non-negative, the above result also shows
is CM on
if and only if
echoing Pollard’s aforementioned classical result for the Mittag–Leffler
One can ask whether there are further complete monotonicity properties for
as in [
21] for
Our last result for the Le Roy function is a monotonicity property which is akin to Proposition 1.
Proposition 10. The mapping is non-increasing on for every
Proof of Proposition 10.
The fact that
decreases on
is obvious for
by the definition of
To show the property on
for
we will use a convex ordering argument. More precisely, the Malmsten Formula (
A3) and the Lévy–Khintchine formula show that for every
the random variable
is the marginal at time t of a real Lévy process, since
for every
with
This is actually well known—see Example E in [
22]. By independence and stationarity of the increments of a Lévy process, we deduce that there exists a multiplicative martingale
such that
for every
. Jensen’s inequality implies
for every
Applying the definition of convex ordering to the function
we get
for every
and
as required. □
Remark 10. (a) In the terminology of [23], the family is a peacock, whose associated multiplicative martingale is completely explicit. We refer to [23] for numerous examples of explicit peacocks related to exponential functionals of Lévy processes. Observe from Lemma 2 that the family is also a peacock. (b) Letting and in Proposition 10 leads to the boundsfor every and The hyperbolic upper bound is optimal as in Theorem 2 and Proposition 2, because as The exponential lower bound is thinner than the order given in Proposition 8. On the other hand, it does not seem that stochastic ordering arguments can help for a uniform estimate involving a logarithmic term. It is natural to ask if the statement of Proposition 10 is also true for the classical Mittag–Leffler function, and this problem seems still open.
Conjecture 5. The mapping is non-increasing on for every
Numerical simulations suggest a positive answer. It is clear by the definition that
is non-increasing for every
on
where
is the location of the minimum of the Gamma function on
A direct consequence of Theorem B in [
5] is also that
is non-increasing on
for every
The constant
appears above because of the convex ordering argument used in [
5]. It seems that other kinds of arguments are necessary to study the monotonicity of
on
We would like to finish this paper with the following related monotonicity result, which relies on a stochastic ordering argument, for the generalized Mittag–Leffler function.
Proposition 11. For every and the mappingis non-increasing on if and non-decreasing on if Proof of Proposition 11. By Remark 3.3 (c) in [
3], we have the probabilistic representation
for every
and
Reasoning as in Proposition 3, we see by factorization that it suffices to show that
is non-increasing on
for the usual stochastic order. On the other hand, the density function of the random variable
is
on
and its value at zero is by the log-convexity of the Gamma function an increasing function of
Moreover, the density functions of
and
cross only once for
at
The single intersection property finishes then the argument, as for Proposition 3. □