Title
Sharp Bounds On Random Walk Eigenvalues Via Spectral Embedding
Abstract
Spectral embedding of graphs uses the top k non-trivial eigenvectors of the random walk matrix to embed the graph into R-k. The primary use of this embedding has been for practical spectral clustering algorithms [39, 43]. Recently, spectral embedding was studied from a theoretical perspective to prove higher order variants of Cheeger's inequality [27, 30].We use spectral embedding to provide a unifying framework for bounding all the eigenvalues of graphs. For example, we show that for any finite connected graph with n vertices and all k >= 2, the kth largest eigenvalue is at most 1 - Omega (k(3)/n(3)), which extends the only other such result known, which is for k = 2 only and is due to [26]. This upper bound improves to 1 - Omega (k(2)/n(2)) if the graph is regular. We generalize these results, and we provide sharp bounds on the spectral measure of various classes of graphs, including vertex-transitive graphs and infinite graphs, in terms of specific graph parameters like the volume growth.As a consequence, using the entire spectrum, we provide (improved) upper bounds on the return probabilities and mixing time of random walks with considerably shorter and more direct proofs. Our work introduces spectral embedding as a new tool in analysing reversible Markov chains. Furthermore, building on [33], we design a local algorithm to approximate the number of spanning trees of massive graphs.
Year
DOI
Venue
2012
10.1093/imrn/rnx082
INTERNATIONAL MATHEMATICS RESEARCH NOTICES
DocType
Volume
Issue
Journal
2018
24
ISSN
Citations 
PageRank 
1073-7928
3
0.60
References 
Authors
10
2
Name
Order
Citations
PageRank
Russell Lyons14912.76
Shayan Oveis Gharan232326.63