1. Introduction
We considered only loopless finite graphs and use [
1] for the terminologies and notations not defined in this paper. Let
be a graph with
vertices and
edges. Usually, we call the number of edges in
G, which are incident to a vertex
, its degree and denoted by
. We use the symbol
to denote the distance between two distinct vertices
x and
y of
G, which is equal to the length of the shortest
-path in
G. The diameter of
G is the maximal distance among all pairs of vertices, formally
. The symbol
denotes the corona of graphs
and
, which is obtained by joining each vertex of
to all the vertices of a copy of
. The identity matrix and all-ones matrix are denoted by
I and
J (each column is an all-ones vector
j), respectively. The adjacency matrix of a graph
G is defined as
, where:
Let
be the diagonal matrix where
is the degree of the vertex
in
G for
. The Laplacian matrix and signless Laplacian matrix is defined as
and
, respectively. It was reported in [
2] that both
L and
Q have non-negative real eigenvalues. In 2017, Nikiforov introduced a new family of matrices [
3]:
where
is an arbitrary real number lying in the interval
It is routine to check that this kind of matrix is the convex combination of
and
, and we call it the
-adjacency matrix in the following discussion. In particular, if
, then
is exactly the adjacency matrix of
and
if
. We encourage the interested reader to consult [
4,
5,
6,
7,
8,
9,
10,
11,
12,
13] and the references therein for more mathematical properties of
.
In what follows, we use to denote the complete graph with n vertices and denote by the set of matrices with n rows and m columns. In particular, if , we write it to be for short.
Let
M be a matrix of order
n; we use
to denote the multiset of eigenvalues of
M and use
to denote the set of distinct eigenvalues of matrix
M. The symbols
and
denote the rank and trace of a matrix
M, respectively. For simplicity,
is the number of distinct eigenvalues of a matrix
M. It is a basic precept of spectral graph theory that low values of
indicate the presence of a special structure in the graph
G; see some details from
Table 1.
Lemma 1 ([
17])
. Let M be a real symmetric matrix with λ as its unique eigenvalue, then . A matrix is called -stochastic if all its row sums are equal to the same number . Obviously, each all-ones matrix is stochastic whether it is rectangular or square.
Lemma 2 ([
17])
. Let M be a real symmetric ω-stochastic matrix. If x is a γ-eigenvector of M for some , then . Lemma 3 ([
17])
. Let be a real symmetric ω-stochastic matrix with , and let such that , then . We need the following important concept.
Definition 1 ([
18])
. A matrix () is said to be reducible if there is a permutation matrix such that:where , , , and is a zero matrix for . If the determinant , clearly M is irreducible, and if M is reducible, it must have at least zero entries.
For simplicity, we define the following set:
Lemma 4 ([
19])
. is an irreducible non-negative symmetric matrix if and only if for . For a real symmetric matrix
, we call its eigenvalue
a main eigenvalue if the eigenspace
is not orthogonal to the all-ones vector; otherwise, we call
the non-main eigenvalue [
20,
21]. For convenience, an eigenvalue is restricted if it has an eigenvector perpendicular to the all-ones vector
j; see more details from [
2]. The set of all restricted eigenvalues of
M is denoted by
.
Lemma 5 ([
17])
. Let M be a real symmetric non-negative ω-stochastic matrix. Then, . Furthermore, if and only if M is reducible. It is known from the literature that the designation “Schur-complement” has been applied to matrices of the form
. Usually, we call
the Schur complement of the nonsingular matrix
E in:
Lemma 6 ([
22])
. Suppose M has an invertible principal submatrix E, then . Let ; there must exist a unique vector such that for and . The unique normalized eigenvector is often called the Perron vector, and is called its Perron root.
Another useful tool is the principal of Perron’s theorem.
Lemma 7 ([
18], p. 508)
. If is non-negative and irreducible and is the Perron root of M, then each of the following hold:(1) ;
(2) is an algebraically (and hence, geometrically) simple eigenvalue of M;
(3) There exists a positive vector x, such that ;
(4) is the unique eigenvalue of maximum modulus, that is for every eigenvalue .
2. Combinatorial Preliminaries
For a given set
, we use
to denote the family of
k-subsets of
F, which is called an
-design over
F if, for any two elements
of
F, there are precisely
sets in
that contain both
for
. A design is said to be non-trivial if
. Each element in
F is called a point of
, while the elements in
are called its blocks. We traditionally use
b to denote the number of elements in
. For instance,
in
Table 2 is respectively the block of
.
Actually, every element of
F exactly appears in
blocks [
23], and this number is usually said to be the replication number of
. In what follows, we sometimes expand the notation of the
-design to be
.
Lemma 8 ([
23])
. Let be a non-trivial -design with b blocks, then b ≥ l. A design is if , and it is called non-symmetric if .
Definition 2. Let be an -design over F. The associated split graph has vertices corresponding to the points and blocks of . Two vertices in are adjacent if one of the following condition holds:
both correspond to points;
p corresponds to a point in F and q to a block in such that .
Actually, is a bidegreed split graph with maximal clique C and stable set S such that and . Alternatively, we have .
Lemma 9 ([
17])
. Let be a non-trivial -design with associated split graph . Suppose that has diameter 3, then is non-symmetric and . The incidence matrix of a design is the matrix with if belongs to the j-th block of and otherwise.
Lemma 10 ([
17])
. Let B be a matrix with values in such that each column of B contains exactly k ones. Then, if and only if B is the incidence matrix of an -design . 3. Bidegreed Split Graphs with Four -Eigenvalues
We call a graph
-extremal if it has diameter
d and exactly
distinct
-eigenvalues. Obviously,
-extremal graphs must be
d-extremal ones. Several examples are illustrated in
Table 3.
A graph
is called a split graph if
, where
C a clique
C and
S a stable set. For simplicity, we denote by
the split graph and assume that
. In 2015, Ghorbani and Azimi presented a characterization all split graphs with at most four distinct eigenvalues [
24]. In 2020, Goldberg et al. found that there exists a flaw in Ghorbani’s paper, because more split graphs of diameter three with exactly four distinct eigenvalues were constructed in [
17]. We encourage the interested reader to consult [
25,
26,
27] for more properties and information on split graphs.
Our main result is the following:
Proposition 1. Let G be a connected bidegreed split graph of diameter 3, with clique and stable set sizes , respectively. Then, G has exactly four distinct α-eigenvalues if and only if one of the following holds:
(1) for ;
(2) for a -design such that has at least one pair of disjoint blocks and:where and: The following is a natural consequence of Proposition 1.
Corollary 1 ([
17,
19])
. Let G be a connected bidegreed split graph of diameter 3, with clique and stable set sizes respectively. Then, G has exactly four distinct eigenvalues (resp. signless Laplacian eigenvalues) if and only if one of the following graphs: for ;
for a -design such that (resp. ) and that has at least one pair of disjoint blocks.
In what follows, we shall pay attention to classifying completely the connected bidegreed -extremal split graphs by using of some tools of combinatorial designs. We assumed that all vertex degrees in G are either or and say that G is -bidegreed.
In the subsequent discussion, we assumed that
G is a connected split bidegreed graph with diameter 3, since the cases with diameters 1 and 2 are trivial. This means that there are exactly two distinct vertex degrees in
. It was reported in [
28] that all vertices in
C (resp. in
S) share the same degree, say
d (resp. say
k). Without loss of generality, we suppose that each vertex in
C is adjacent to
vertices inside
S, which yields that
and
. In this paper, we set that
.
It is routine to check that the
-adjacency matrix of
G, denoted by
, can be represented as follows:
where the vertices of
C are listed first and then those of
S and
.
The initial assumption of bidegreeness implies that the matrix B satisfies and . Therefore, , implying that is -stochastic.
Let
be an eigenvalue of
with eigenvector
, then we have:
which yields that:
If
, then we have
. Hence:
Multiplying both sides of Equation (1) by
J on the left, we have:
Equivalently,
which implies that:
In particular, if
, then Equality (1) can be written as:
We naturally conclude the following result, which is be used in later proofs.
Proposition 2. Let be a connected bidegreed split graph with diameter 3. If μ is an eigenvalue of , then at least one of the following holds:
(1) ;
(2) is a root of the quadratic equation ;
(3) is a root of the quadratic equation for any and .
Let us emphasize that Item (3) of Proposition 2 implies that must be an eigenvalue of . Next, we examine Item (2) of Proposition 2.
The theory of equitable partition is very classical. We briefly recall the needed definitions and set our notation. Let G be a graph; a partition of its vertex set is said to be equitable if any vertex is adjacent to vertices in , irrespective of the choice of v. The partition can be described by an matrix . It is well known that if is an equitable partition of a graph, then the spectrum of the corresponding partition matrix is a subset of the spectrum of the graph’s matrix (where the matrix can be the adjacency, Laplacian, or signless Laplacian—under suitable definitions), and their Perron values are equal.
The initial assumption tells us that
is an equitable partition of the vertex set. Hence, the quotient matrix of
A and
L can be respectively given by:
and:
Evidently, . Hence, by the properties of the equitable partition, we have . This implies that the spectrum of is a subset of . Hence, in Item (2) of Proposition 2 must be an eigenvalue of .
Another useful tool will be the following certainty.
Proposition 3. The discriminant of the equation is positive, i.e., Proof. For convenience, we use
to denote the right side of the inequality in Proposition 3. Note that
and
, and it follows that:
since
holds for
.
If , it is not difficult to find that . If , then we have . To complete the proof, we consider the following two simple situations: if , the conclusion of the proof is straightforward; if , then we have . Hence, and . □
4. Proof of Proposition 1
From the previous discussion, one can find that the equation has two different roots, say and . In what follows, we assumed that . It is routine to check that and .
Proposition 4. ρ is the Perron root of .
Proof. Because is irreducible and is non-negative, we have that is irreducible. We assumed that is the Perron root of . According to the Perron–Frobenius theorem, is an algebraically simple eigenvalue of . Therefore, there is a positive vector y such that . In what follows, we shall verify that satisfies Item (2) of Proposition 2.
If satisfies Item (3) of Proposition 2, then we have for any . This implies that and are either positive or negative, which contradicts the initial assumption that y is a positive vector.
If satisfies Item (1) of Proposition 2, then we have . Note that and ; it then follows that and since . In addition, , again a contradiction.
From the previous analysis, we obtained that must satisfy Item (2) of Proposition 2. Hence, or . Consequently, we have that since is the Perron root of and . □
Note that, when
for some non-negative vector
x, by Proposition 2 (3), the equation
can be rewritten as:
which is equivalent to:
where
, since
. For convenience, let
. It follows that
is a restricted eigenvalue of
. Consequently, we have
since
is positive semi-definite.
It is not difficult to find that the discriminant of the quadratic equation:
is equal to
. Knowing that:
it immediately yields that
since
. Hence, the quadratic equation
has two distinct roots, say
. Let
.
Here are some remarks and consequences. If , we know that and , which implies that has two distinct eigenvalues induced by each non-zero restricted eigenvalue . If , then and .
The following proposition allows us to generalize the result in [
19].
Proposition 5. Let γ be a zero-restricted eigenvalue of , then is an eigenvalue of or .
Proof. Knowing that and , then we have and . Hence, is an eigenvalue of since . Next, we shall prove that is also an eigenvalue of or .
Let
be an eigenvector of
corresponding to
. Hence,
which is equivalent to the following:
For simplicity, we distinguish the following two cases.
Case 1. The equation only has zero solutions.
In this case, we have for . Accordingly, the column vectors of are linearly dependent, while the column vectors of B are linearly independent since for . Hence, .
If is irreducible, then one can find that is not unique. In other words, there must exist two distinct eigenvalues, say , such that . Hence, .
If
is reducible, in conjunction with the fact that
is
-stochastic, it follows from Lemma 5 that
. Obviously,
and
. It is not difficult to find that
. In the sequel, we shall prove that
. Actually,
Bearing in mind that
, then we have
. This implies that
, a contradiction to the fact that
. Hence, we have
. This means that:
which indicates
.
Case 2. The equation have non-zero solutions.
Let
be a vector such that
. Direct calculations show that:
and consequently, we obtain that
is an eigenvalue of
with respect to
.
As desired, we complete the proof of Proposition 5. □
We naturally conclude with some relations of the (restricted) eigenvalues, which are illustrated in the following table.
Proposition 6. .
Proof. Suppose are the restricted eigenvalues of . To complete the proof, we distinguish the following two cases.
Case 1. such that .
Obviously, each
could produce two different eigenvalues of
, say
. Hence, the contributions of
to
equal
. By
Table 4,
is also an eigenvalue of
. Hence, we have
.
Case 2. such that .
It follows that the contributions of to equals . For , by Proposition 5, we know that is an eigenvalue of or . If , then we have . If is an eigenvalue of , then has two extra distinct eigenvalues and , which will not be contained in . Hence, .
As desired, we complete the proof of Proposition 6. □
Proposition 7. .
Proof. It is routine to check that:
Evidently,
, the eigenvalues of which could be presented by:
Clearly, the matrix is invertible since the initial hypotheses . In what follows, we use M to denote the matrix of order c.
According to the definition of the Schur complement, we have:
where
. Note that
, then we have:
and consequently:
Because
is
-stochastic and
, by Lemma 3, we obtain that:
implying that:
Hence, . □
Next, we shall prove our main result:
Proof of Proposition 1. To complete the proof, we first prove that if G has four distinct eigenvalues, then it must be one of the forms indicated. Note that ; by Proposition 6, has at most one restricted eigenvalue. Hence, .
In what follows, we are concerned with the following possibilities.
Case 1. is reducible.
According to Lemma 5, one can find that is the restricted and unique eigenvalue of . It follows from Lemma 1 that , which means that . On the other hand, each of the diagonal elements of equals since G is a bidegreed split graph. This implies that . Hence, .
Let
; it follows from
Table 4 that
. An easy check shows that
, otherwise
is an eigenvalue of
, a contradiction. By Proposition 7, we have
. Accordingly,
, and consequently,
and
, since
. Thus,
.
Case 2. is irreducible.
According to Lemma 5, we know that
. Hence, there must exist
such that
. Therefore,
. By the Perron–Frobenius theorem,
is an algebraically simple eigenvalue of
, from which we know that the trail of
equals
. After a simple computation, we readily obtain that
and
. By Lemma 4, we have:
For simplicity, let and , then . Thus, by Lemma 10, we know that B is the incidence matrix of -design . Hence, . In addition, . If , then . Hence, , which contradicts the fact . Therefore, we have , and consequently, .
By Lemma 9, we know that
. Hence, by Proposition 7,
. It then follows that
must be an eigenvalue of
. Accordingly, we know that
. Note that
is also an eigenvalue of
, which is different from
and
, then we have
. Hence, the smaller root
of the quadratic equation
is:
which is also a root of:
Combining
and
, we have:
which is equivalent to the following:
where:
Next, we shall verify the sufficiency of Proposition 1.
If
for
, it follows that:
Direct calculations show that it has four distinct eigenvalues:
where:
and:
If for a -design such that has at least one pair of disjoint blocks, then we know that the diameter of G is equal to three. By Lemma 9, we have . Hence, according to Proposition 7, implying that is an eigenvalue of .
By Lemma 10 and the definition of the bidegreed split graph, we have and . Hence, and . Consequently, we have that each element of is positive since and . It follows from Definition 1.4 that is irreducible. Direct calculations show that the eigenvalues of are . Hence, is the Perron eigenvalue of .
By Lemma 5, we have , which yields that is the unique restricted eigenvalue of . To complete the proof, we let . Note that , then we obtain that . Hence, , as desired .
This completes the proof of Proposition 1. □