Heavy tails, importance sampling and cross-entropy
Contribuinte(s) |
Peter Taylor |
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Data(s) |
01/01/2005
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Resumo |
We consider the problem of estimating P(Yi + (...) + Y-n > x) by importance sampling when the Yi are i.i.d. and heavy-tailed. The idea is to exploit the cross-entropy method as a toot for choosing good parameters in the importance sampling distribution; in doing so, we use the asymptotic description that given P(Y-1 + (...) + Y-n > x), n - 1 of the Yi have distribution F and one the conditional distribution of Y given Y > x. We show in some specific parametric examples (Pareto and Weibull) how this leads to precise answers which, as demonstrated numerically, are close to being variance minimal within the parametric class under consideration. Related problems for M/G/l and GI/G/l queues are also discussed. |
Identificador | |
Idioma(s) |
eng |
Publicador |
Marcel Dekker Inc. |
Palavras-Chave | #Statistics & Probability #Algorithmic Complexity #Cross-entropy #Gi/g/1 Queue #Importance Sampling #Maximum Likelihood #M/g/1 Queue #Pareto Distribution #Pollaczek-khintchine Formula #Random Walk #Rare Event #Subexponential Distribution #Weibull Distribution #Simulation #Distributions #C1 #230203 Statistical Theory #780101 Mathematical sciences #010206 Operations Research |
Tipo |
Journal Article |