Poster
Mixing Time Estimation in Reversible Markov Chains from a Single Sample Path
Daniel Hsu · Aryeh Kontorovich · Csaba Szepesvari

Thu Dec 10th 11:00 AM -- 03:00 PM @ 210 C #85 #None
This article provides the first procedure for computing a fully data-dependent interval that traps the mixing time $t_{mix}$ of a finite reversible ergodic Markov chain at a prescribed confidence level. The interval is computed from a single finite-length sample path from the Markov chain, and does not require the knowledge of any parameters of the chain. This stands in contrast to previous approaches, which either only provide point estimates, or require a reset mechanism, or additional prior knowledge. The interval is constructed around the relaxation time $t_{relax}$, which is strongly related to the mixing time, and the width of the interval converges to zero roughly at a $\sqrt{n}$ rate, where $n$ is the length of the sample path. Upper and lower bounds are given on the number of samples required to achieve constant-factor multiplicative accuracy. The lower bounds indicate that, unless further restrictions are placed on the chain, no procedure can achieve this accuracy level before seeing each state at least $\Omega(t_{relax})$ times on the average. Finally, future directions of research are identified.

Author Information

Daniel Hsu (Columbia University)
Aryeh Kontorovich (Ben Gurion University)
Csaba Szepesvari (University of Alberta)

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