LGDSApr 22, 2017

Testing Symmetric Markov Chains from a Single Trajectory

arXiv:1704.06850v216 citations
Originality Incremental advance
AI Analysis

This addresses a fundamental challenge in distribution testing for Markov chains, which is incremental as it extends classical i.i.d. testing to dynamic, dependent data settings.

The paper tackles the problem of testing whether an unknown symmetric Markov chain is identical to a model chain or far from it, using only a single trajectory without restarts, and provides efficient testers and tight lower bounds for this task.

Classical distribution testing assumes access to i.i.d. samples from the distribution that is being tested. We initiate the study of Markov chain testing, assuming access to a single trajectory of a Markov Chain. In particular, we observe a single trajectory X0,...,Xt,... of an unknown, symmetric, and finite state Markov Chain M. We do not control the starting state X0, and we cannot restart the chain. Given our single trajectory, the goal is to test whether M is identical to a model Markov Chain M0 , or far from it under an appropriate notion of difference. We propose a measure of difference between two Markov chains, motivated by the early work of Kazakos [Kaz78], which captures the scaling behavior of the total variation distance between trajectories sampled from the Markov chains as the length of these trajectories grows. We provide efficient testers and information-theoretic lower bounds for testing identity of symmetric Markov chains under our proposed measure of difference, which are tight up to logarithmic factors if the hitting times of the model chain M0 is O(n) in the size of the state space n.

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