Tata Institute of Fundamental Research

Spectral gap of nonreversible Markov chains

Seminar
Speaker: Aindrila Rakshit (TIFR)
Organiser: Piyush Srivastava
Date: Thursday, 16 Jul 2026, 16:30 to 17:30
Venue: A-201 (STCS Seminar Room)

(Scan to add to calendar)
Abstract: 

We define the spectral gap of a Markov chain on a finite state space as the second-smallest singular value of the generator of the chain, generalizing the usual definition of spectral gap for reversible chains. We then define the relaxation time of the chain as the inverse of this spectral gap, and show that this relaxation time can be characterized, for any Markov chain, as the time required for convergence of empirical averages. This relaxation time is related to the Cheeger constant and the mixing time of the chain through inequalities that are similar to the reversible case, and the path argument can be used to get upper bounds. Several examples are worked out. An interesting finding from the examples is that the time for convergence of empirical averages in nonreversible chains can often be substantially smaller than the mixing time.

BY SOURAV CHATTERJEE, Stanford University (2025)

The Annals of Applied Probability35(4), 2644–2677. https://doi.org/10.1214/25-AAP2183https://arxiv.org/abs/2310.10876