arXiv Analytics

Sign in

arXiv:1211.2207 [math.PR]AbstractReferencesReviewsResources

Markov chain Monte Carlo for computing rare-event probabilities for a heavy-tailed random walk

Thorbjörn Gudmundsson, Henrik Hult

Published 2012-11-09Version 1

In this paper a method based on a Markov chain Monte Carlo (MCMC) algorithm is proposed to compute the probability of a rare event. The conditional distribution of the underlying process given that the rare event occurs has the probability of the rare event as its normalizing constant. Using the MCMC methodology a Markov chain is simulated, with that conditional distribution as its invariant distribution, and information about the normalizing constant is extracted from its trajectory. The algorithm is described in full generality and applied to the problem of computing the probability that a heavy-tailed random walk exceeds a high threshold. An unbiased estimator of the reciprocal probability is constructed whose normalized variance vanishes asymptotically. The algorithm is extended to random sums and its performance is illustrated numerically and compared to existing importance sampling algorithms.

Related articles: Most relevant | Search more
arXiv:1503.03626 [math.PR] (Published 2015-03-12)
Integral geometry for Markov chain Monte Carlo: overcoming the curse of search-subspace dimensionality
arXiv:1509.08775 [math.PR] (Published 2015-09-29)
Error Bounds for Sequential Monte Carlo Samplers for Multimodal Distributions
arXiv:1112.2117 [math.PR] (Published 2011-12-09, updated 2011-12-13)
How to Lose with Least Probability