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arxiv: 1801.00196 · v1 · pith:M3NBLHB6new · submitted 2017-12-30 · 💻 cs.DM

On approximating the stationary distribution of time-reversible Markov chains

classification 💻 cs.DM
keywords chainmarkovapproximatingchainsmixingprobabilitystatestationary
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Approximating the stationary probability of a state in a Markov chain through Markov chain Monte Carlo techniques is, in general, inefficient. Standard random walk approaches require $\tilde{O}(\tau/\pi(v))$ operations to approximate the probability $\pi(v)$ of a state $v$ in a chain with mixing time $\tau$, and even the best available techniques still have complexity $\tilde{O}(\tau^{1.5}/\pi(v)^{0.5})$, and since these complexities depend inversely on $\pi(v)$, they can grow beyond any bound in the size of the chain or in its mixing time. In this paper we show that, for time-reversible Markov chains, there exists a simple randomized approximation algorithm that breaks this "small-$\pi(v)$ barrier".

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