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 Õ(τ/ π(v)) operations to approximate the probability π(v) of a state v in a chain with mixing time τ, and even the best available techniques still have complexity Õ(τ 1.5 / π(v) 0.5 ) ; and since these complexities depend inversely on π(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-π(v) barrier”.

On approximating the stationary distribution of time-reversible Markov chains / Bressan, M.; Peserico, E.; Pretto, L.. - In: THEORY OF COMPUTING SYSTEMS. - ISSN 1432-4350. - (2019). [10.1007/s00224-019-09921-3]

On approximating the stationary distribution of time-reversible Markov chains

Bressan M.
;
2019

Abstract

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 Õ(τ/ π(v)) operations to approximate the probability π(v) of a state v in a chain with mixing time τ, and even the best available techniques still have complexity Õ(τ 1.5 / π(v) 0.5 ) ; and since these complexities depend inversely on π(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-π(v) barrier”.
2019
large graph algorithms; Markov chains; MCMC sampling; randomized algorithms; sublinear algorithms
01 Pubblicazione su rivista::01a Articolo in rivista
On approximating the stationary distribution of time-reversible Markov chains / Bressan, M.; Peserico, E.; Pretto, L.. - In: THEORY OF COMPUTING SYSTEMS. - ISSN 1432-4350. - (2019). [10.1007/s00224-019-09921-3]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1288909
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