STLGPRMay 6, 2016

Function-Specific Mixing Times and Concentration Away from Equilibrium

arXiv:1605.02077v29 citations
Originality Incremental advance
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This work addresses the challenge of efficient statistical estimation in MCMC for practitioners, offering incremental improvements over existing methods.

The paper tackles the problem of slow mixing in Markov chains for Monte Carlo approximations by introducing function-specific mixing times and spectral gaps, which allow for sharper concentration inequalities and confidence intervals that outperform classical bounds.

Slow mixing is the central hurdle when working with Markov chains, especially those used for Monte Carlo approximations (MCMC). In many applications, it is only of interest to estimate the stationary expectations of a small set of functions, and so the usual definition of mixing based on total variation convergence may be too conservative. Accordingly, we introduce function-specific analogs of mixing times and spectral gaps, and use them to prove Hoeffding-like function-specific concentration inequalities. These results show that it is possible for empirical expectations of functions to concentrate long before the underlying chain has mixed in the classical sense, and we show that the concentration rates we achieve are optimal up to constants. We use our techniques to derive confidence intervals that are sharper than those implied by both classical Markov chain Hoeffding bounds and Berry-Esseen-corrected CLT bounds. For applications that require testing, rather than point estimation, we show similar improvements over recent sequential testing results for MCMC. We conclude by applying our framework to real data examples of MCMC, providing evidence that our theory is both accurate and relevant to practice.

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