Towards zero variance estimators for rare event probabilities
Abstract
Improving Importance Sampling estimators for rare event probabilities requires sharp approximations of conditional densities. This is achieved for events En:=(f(X1)+...+f(Xn))∈An where the summands are i.i.d. and En is a large or moderate deviation event. The approximation of the conditional density of the real r.v's Xi 's, for 1≤i≤kn with repect to En on long runs, when kn/n1, is handled. The maximal value of k compatible with a given accuracy is discussed; algorithms and simulated results are presented.
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