Mathematics > Probability
[Submitted on 28 Jul 2021]
Title:Recursive Estimation of a Failure Probability for a Lipschitz Function
View PDFAbstract:Let g : $\Omega$ = [0, 1] d $\rightarrow$ R denote a Lipschitz function that can be evaluated at each point, but at the price of a heavy computational time. Let X stand for a random variable with values in $\Omega$ such that one is able to simulate, at least approximately, according to the restriction of the law of X to any subset of $\Omega$. For example, thanks to Markov chain Monte Carlo techniques, this is always possible when X admits a density that is known up to a normalizing constant. In this context, given a deterministic threshold T such that the failure probability p := P(g(X) > T) may be very low, our goal is to estimate the latter with a minimal number of calls to g. In this aim, building on Cohen et al. [9], we propose a recursive and optimal algorithm that selects on the fly areas of interest and estimate their respective probabilities.
Submission history
From: Arnaud Guyader [view email] [via CCSD proxy][v1] Wed, 28 Jul 2021 13:56:49 UTC (197 KB)
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