Improved algorithms for rare event simulation with heavy tails
Contribuinte(s) |
C. C. Heyde |
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Data(s) |
01/01/2006
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Resumo |
The estimation of P(S-n > u) by simulation, where S, is the sum of independent. identically distributed random varibles Y-1,..., Y-n, is of importance in many applications. We propose two simulation estimators based upon the identity P(S-n > u) = nP(S, > u, M-n = Y-n), where M-n = max(Y-1,..., Y-n). One estimator uses importance sampling (for Y-n only), and the other uses conditional Monte Carlo conditioning upon Y1,..., Yn-1. Properties of the relative error of the estimators are derived and a numerical study given in terms of the M/G/1 queue in which n is replaced by an independent geometric random variable N. The conclusion is that the new estimators compare extremely favorably with previous ones. In particular, the conditional Monte Carlo estimator is the first heavy-tailed example of an estimator with bounded relative error. Further improvements are obtained in the random-N case, by incorporating control variates and stratification techniques into the new estimation procedures. |
Identificador | |
Idioma(s) |
eng |
Publicador |
Applied Probability Trust |
Palavras-Chave | #Bounded relative error #Complexity #Conditional Monte Carlo conditioning #Control variate #logarithmic efficiency #M/G/1 queue #Pollaczek-Khinchin formula #Rare event #Regular variation #Stratification #Subexponential distribution #Weibull distribution #Distributions #Times #230204 Applied Statistics #780101 Mathematical sciences #010405 Statistical Theory #010206 Operations Research |
Tipo |
Journal Article |