We present a novel method, called the transform likelihood ratio (TLR) method, for estimation of rare event probabilities with heavy-tailed distributions. Via a simple transformation ( change of variables) technique the TLR method reduces the original rare event probability estimation with heavy tail distributions to an equivalent one with light tail distributions. Once this transformation has been established we estimate the rare event probability via importance sampling, using the classical exponential change of measure or the standard likelihood ratio change of measure. In the latter case the importance sampling distribution is chosen from the same parametric family as the transformed distribution. We estimate the optimal parameter vecto...
Most of the efficient rare event simulation methodology for heavy-tailed systems has concentrated on...
We consider importance sampling simulation for es-timating rare event probabilities in the presence ...
This paper deals with estimations of probabilities of rare events using fast simulation based on the...
Estimation of rare event probability is a challenging problem in the literature on simulation-based ...
Although importance sampling is an established and effective sampling and estimation technique, it b...
Approximating the tail probability of a sum of heavy-tailed random variables is a difficult problem....
The estimation of P(S-n > u) by simulation, where S, is the sum of independent. identically distribu...
Successful efficient rare event simulation typically involves using importance sampling tailored to ...
This paper deals with estimation of probabilities of rare events in static simulation models using a...
This dissertation explores a few topics in the study of rare events in stochastic systems, with a pa...
We consider the problem of efficient simulation estimation of the density function at the tails, ...
Although importance sampling is an established and effective sampling and estimation technique, it b...
Estimation of rare-event probabilities in high-dimensional settings via importance sampling is a dif...
We develop an e ¢ cient importance sampling algorithm for estimat-ing the tail distribution of heavy...
International audienceCrude Monte-Carlo or quasi Monte-Carlo methods are well suited to characterize...
Most of the efficient rare event simulation methodology for heavy-tailed systems has concentrated on...
We consider importance sampling simulation for es-timating rare event probabilities in the presence ...
This paper deals with estimations of probabilities of rare events using fast simulation based on the...
Estimation of rare event probability is a challenging problem in the literature on simulation-based ...
Although importance sampling is an established and effective sampling and estimation technique, it b...
Approximating the tail probability of a sum of heavy-tailed random variables is a difficult problem....
The estimation of P(S-n > u) by simulation, where S, is the sum of independent. identically distribu...
Successful efficient rare event simulation typically involves using importance sampling tailored to ...
This paper deals with estimation of probabilities of rare events in static simulation models using a...
This dissertation explores a few topics in the study of rare events in stochastic systems, with a pa...
We consider the problem of efficient simulation estimation of the density function at the tails, ...
Although importance sampling is an established and effective sampling and estimation technique, it b...
Estimation of rare-event probabilities in high-dimensional settings via importance sampling is a dif...
We develop an e ¢ cient importance sampling algorithm for estimat-ing the tail distribution of heavy...
International audienceCrude Monte-Carlo or quasi Monte-Carlo methods are well suited to characterize...
Most of the efficient rare event simulation methodology for heavy-tailed systems has concentrated on...
We consider importance sampling simulation for es-timating rare event probabilities in the presence ...
This paper deals with estimations of probabilities of rare events using fast simulation based on the...