Authors
Charles Bordenave, Pietro Caputo, Justin Salez
Publication date
2019/2/4
Journal
Probability Theory and Related Fields
Volume
173
Pages
261-292
Publisher
Springer Berlin Heidelberg
Description
We study convergence to equilibrium for a class of Markov chains in random environment. The chains are sparse in the sense that in every row of the transition matrix P the mass is essentially concentrated on few entries. Moreover, the entries are exchangeable within each row. This includes various models of random walks on sparse random directed graphs. The models are generally non reversible and the equilibrium distribution is itself unknown. In this general setting we establish the cutoff phenomenon for the total variation distance to equilibrium, with mixing time given by the logarithm of the number of states times the inverse of the average row entropy of P. As an application, we consider the case where the rows of P are i.i.d. random vectors in the domain of attraction of a Poisson–Dirichlet law with index . Our main results are based on a detailed analysis of the weight of the trajectory followed …
Total citations
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Scholar articles
C Bordenave, P Caputo, J Salez - Probability Theory and Related Fields, 2019