Assessing significance in a Markov chain without mixing
Maria Chikina, Alan Frieze, Wesley Pegden

TL;DR
This paper introduces a new statistical test for assessing whether a state in a reversible Markov chain was drawn from its stationary distribution, without requiring mixing time bounds, and demonstrates its application to detecting gerrymandering.
Contribution
We develop a Markov chain significance test based solely on reversibility, providing rigorous bounds without mixing assumptions, and illustrate its practical use in gerrymandering detection.
Findings
The test is significant at p=√(2ε) for ε-outliers.
The method requires no assumptions beyond reversibility.
Application to gerrymandering detection demonstrates practical utility.
Abstract
We present a new statistical test to detect that a presented state of a reversible Markov chain was not chosen from a stationary distribution. In particular, given a value function for the states of the Markov chain, we would like to demonstrate rigorously that the presented state is an outlier with respect to the values, by establishing a -value for observations we make about the state under the null hypothesis that it was chosen uniformly at random. A simple heuristic used in practice is to sample ranks of states from long random trajectories on the Markov chain, and compare these to the rank of the presented state; if the presented state is a -outlier compared to the sampled ranks (i.e., its rank is in the bottom of sampled ranks) then this should correspond to a -value of . This test is not rigorous, however, without good bounds on the mixing time of…
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