1. Introduction
The topological structures of many social, biological, and technological systems can be characterized by the connectivity properties of the interaction pathways (edges) between system components (vertices) [
1]. Starting with the Königsberg seven-bridge problem in 1736, graphs with bidirectional or symmetric edges have ideally epitomized structures of various complex systems, and have developed into one of the mainstays of the modern discrete mathematics and network theory. Formally, a simple graph 
G consists of a vertex set 
 and an edge set 
. The adjacency matrix of 
G is a symmetric 
-matrix 
, where 
 if vertices 
i and 
j are adjacent, and 
 otherwise. It is well-known in algebraic graph theory that 
 has exactly 
n real eigenvalues 
 due to its symmetry. They are usually called the spectrum (eigenvalues) of 
G itself [
2].
A spectral graph invariant, the Estrada index 
 of 
G, is defined as
      
      This quantity was introduced by Estrada [
3] in 2000. It has noteworthy chemical applications, such as quantifying the degree of folding of long-chain molecules and the Shannon entropy [
3,
4,
5,
6,
7]. The Estrada index provides a remarkable measure of subgraph centrality as well as fault tolerance in the study of complex networks [
1,
8,
9,
10]. Building upon varied symmetric features in graphs, mathematical properties of this invariant can be found in, e.g., [
11,
12,
13,
14,
15,
16,
17,
18].
The Estrada index can be readily calculated once the eigenvalues are known. However, it is notoriously difficult to compute the eigenvalues of a large matrix even for 
-matrix 
. In the past few years, researchers managed to establish a number of lower and upper bounds to estimate this invariant (see [
13] for an updated survey). A common drawback is that only few classes of graphs attain the equalities of those bounds. Therefore, one may naturally wonder the typical behavior of the invariant 
 for most graphs with respect to other graph parameters such as the number of vertices 
n.
The classical Erdős–Rényi random graph model 
 includes the edges between all pairs of vertices independently at random with probability 
p [
19]. It has symmetric, bell-shaped degree distribution, which is shared by many other random graph models. Regarding the Estrada index, Chen 
et al. [
20] showed the following result: Let 
 be a random graph with a constant 
, then
      
      Here, we say that a certain property 
 holds in 
 almost surely (a.s.) if the probability that a random graph 
 has the property 
 converges to 1 as 
n tends to infinity. Therefore, the result (
1) presents an analytical estimate of the Estrada index for almost all graphs.
Our motivation in this paper is to investigate the Estrada index of random bipartite graphs, which is a natural bipartite version of Erdős–Rényi random graphs. Bipartite graphs appear in a range of applications in timetabling, communication networks and computer science, where components of the systems are endowed with two different attributes and symmetric relations are only established between these two parts [
21,
22,
23]. Formally, a bipartite graph is a graph whose vertices can be divided into two disjoint sets 
 and 
 such that every edge connects a vertex in 
 to a vertex in 
. A bipartite graph is a graph that does not contain any odd-length cycles; (chemical) trees are bipartite graphs. The random bipartite graph model is denoted by 
, where 
 for 
, satisfying 
.
The authors in [
20] posed the following conjecture pertaining to bipartite graphs.
      
Conjecture 1.  Let  be a random bipartite graph with a constant . Thenif and only if .  In this paper, by means of the symmetry in 
 and the spectral distribution of random matrix, we obtain lower and upper bounds for 
. For ease of analysis, we assume that 
. We establish the estimate
	  
Thus a weak version of Conjecture 1 follows readily:
	  holds, provided 
 (
i.e., 
).
  3. Proof of Theorem 1
This section is devoted to the proof of Theorem 1, which heavily relies on the symmetry in .
Throughout the paper, we shall understand 
 as a constant. Let 
 be a random matrix, where the entries 
 are independent and identically distributed with 
. We denote by the eigenvalues of 
M by 
 and its empirical spectral distribution by
      
Lemma 1.  (Marčenko–Pastur Law [
26]) 
Let  be a random matrix, where the entries  are independent and identically distributed with mean zero and variance . Suppose that  are functions of n, and . Then, with probability 1, the empirical spectral distribution  converges weakly to the Marčenko–Pastur Law  as , where  has the densityand has a point mass  at the origin if , where  and . The above result formulates the limit spectral distribution of 
, which will be a key ingredient of our later derivation for 
. The main approach employed to prove the assertion is called moment approach. It can be shown that for each 
,
      
      We refer the reader to the seminal survey by Bai [
26] for further details on the moment approach and the Marčenko–Pastur Law-like results.
The following two lemmas will be needed.
      
Lemma 2.  (In Page 219 [
27]), 
Let μ be a measure. Suppose that functions  converge almost everywhere to functions , respectively, and that  almost everywhere. If  and , then . Lemma 3.  (Weyl’s inequality [
28]) 
Let  and  be symmetric matrices such that . Suppose their eigenvalues are ordered as , , and , respectively. Thenfor any . Recall that the random bipartite graph  consists of all bipartite graphs with vertex set , in which the edges connecting vertices between  and  are chosen independently with probability . We assume  (),  and .
For brevity, let 
 be the adjacency matrix, and denote by 
 a quasi-unit matrix, where 
 if 
 or 
, and 
 otherwise. Let 
 be the unit matrix and 
 be the matrix whose all entries are equal to 1. By labeling the vertices appropriately, we obtain
      
      where 
 is a random matrix with all entries 
 being independent and identically distributed with mean zero and variance 
. For 
, by basic matrix transforms, namely, taking the determinants of both sides of
      
      we have
      
      where 
 is the determinant of matrix 
M. Consequently,
      
      Therefore, the eigenvalues of 
 are symmetric: If 
, then 
 is the eigenvalue of 
 if and only if 
 is the eigenvalue of 
. Since 
 is positive semi-definite, we know that 
 has at least 
 zero eigenvalues and its spectrum can be arranged in a non-increasing order as
      
      assuming 
 when 
n is large enough.
In what follows, we shall investigate 
 and prove Theorem 1 through a series of propositions. For convenience, we sometimes write 
 for a real symmetric matrix 
. Thus, 
.
	  
Proof.  Let 
 be the density of 
. By means of Lemma 1, we get 
 converges to 
 a.s. as 
n tends to infinity. It follows from the bounded convergence theorem that
      
      By Lemma 1 we know that there exists a large 
 such that all eigenvalues of 
 do not exceed 
ω. Since the expansion 
 converges uniformly on 
, we obtain from (
8) that
      
      Combining (
10) with (
11) we derive
      
      □
 Proposition 2.  where a and b are given as in Lemma 1.  Proof.  Define
      Then we have
      
      Analogous to the proof of (
10) we derive
      
      For any 
, we have 
. By Lemma 2 and Proposition 1 we deduce that
      
      Accordingly, we have
      
      It follows from (
12) and (
13) that
      
Next, we calculate the sum of the exponentials of the smallest 
 eigenvalues of 
. Similarly as in (
12), we obtain
      
      Noting that 
 for 
, we likewise have
      
      by employing Lemma 2 and Proposition 1. It then follows from (
15) and (
16) that
      
Finally, combining (
14), (
17) and the fact that 
, we readily deduce the assertion of Proposition 2. □
 Proposition 3.  where a, b are given as in Lemma 1, and .  Proof.  Define
      
      Then we have 
. Therefore, the sum of the exponentials of the largest 
 eigenvalues of 
 is
      
      Analogous to the proof of (
14) we obtain
      
      where 
. Similarly, the sum of the exponentials of the smallest 
 eigenvalues of 
 satisfies
      
      Combining (
18), (
19) and the fact that 
, we complete the proof of Proposition 3. □
 Proof.  Since 
 for large 
n, by the Geršhgorin circle theorem we deduce
      
      In view of Lemma 3 and 
, we get
      
      for all 
i. Consequently, 
. It then follows from Proposition 3 that
      
      Note that the rate of convergence in (
18) as well as (
19) can be bounded by 
 using the moment approach (for instance, see Theorem 4.5.5 in [
29] ) and the estimates in [
26] (pp. 621–623). Hence, the infinitesimal quantity 
 on both sides of (
20) is equivalent to 
. Inserting 
 and 
 into (
20), we have
      
      as desired. □
 With Proposition 4 in our hands, we quickly get the proof of our main result.
      
Proof of Theorem 1.  Since 
, the upper bound in Proposition 4 yields 
 a.s. On the other hand, the lower bound 
 ≥ 
 a.s. can be easily read out from Theorem 3.1 of [
20]. □
 We mention that it is possible that our method can be pushed further to obtain sharper bounds, for example, a more fine-grained analysis in Proposition 2 could give better estimates for the second order terms in the expansion for .