The cross-entropy (CE) method is an adaptive importance sampling procedure that has been successfully applied to a diverse range of complicated simulation problems. However, recent research has shown that in some high-dimensional settings, the likelihood ratio degeneracy problem becomes severe and the importance sampling estimator obtained from the CE algorithm becomes unreliable. We consider a variation of the CE method whose performance does not deteriorate as the dimension of the problem increases. We then illustrate the algorithm via a high-dimensional estimation problem in risk management
The variance minimization (VM) and cross-entropy (CE) methods are two versatile adaptive importance ...
Although importance sampling is an established and effective sampling and estimation technique, it b...
The variance minimization (VM) and cross-entropy (CE) methods are two versatile adaptive importance ...
The cross-entropy (CE) method is an adaptive importance sampling procedure that has been successfull...
The cross-entropy (CE) method is an adaptive importance sampling procedure that has been successfull...
The cross-entropy method is an established technique for solving difficult estimation, simulation, a...
We consider an adaptive importance sampling approach to estimate the marginal likeli-hood, a quantit...
The cross entropy is a well-known adaptive importance sampling method which requires estimating an o...
The Cross Entropy is a well-known adaptive importance sampling method whichrequires estimating an op...
We consider an adaptive importance sampling approach to estimating the marginal likelihood, a quanti...
The cross entropy is a well-known adaptive importance sampling method which requires estimating an o...
Rare event probability estimation is an important topic in reliability analysis. Stochastic methods,...
25 pagesInternational audienceThis paper deals with the estimation of rare event probabilities using...
The variance minimization (VM) and cross-entropy (CE) methods are two versatile adaptive importance ...
This paper deals with estimation of probabilities of rare events in static simulation models using a...
The variance minimization (VM) and cross-entropy (CE) methods are two versatile adaptive importance ...
Although importance sampling is an established and effective sampling and estimation technique, it b...
The variance minimization (VM) and cross-entropy (CE) methods are two versatile adaptive importance ...
The cross-entropy (CE) method is an adaptive importance sampling procedure that has been successfull...
The cross-entropy (CE) method is an adaptive importance sampling procedure that has been successfull...
The cross-entropy method is an established technique for solving difficult estimation, simulation, a...
We consider an adaptive importance sampling approach to estimate the marginal likeli-hood, a quantit...
The cross entropy is a well-known adaptive importance sampling method which requires estimating an o...
The Cross Entropy is a well-known adaptive importance sampling method whichrequires estimating an op...
We consider an adaptive importance sampling approach to estimating the marginal likelihood, a quanti...
The cross entropy is a well-known adaptive importance sampling method which requires estimating an o...
Rare event probability estimation is an important topic in reliability analysis. Stochastic methods,...
25 pagesInternational audienceThis paper deals with the estimation of rare event probabilities using...
The variance minimization (VM) and cross-entropy (CE) methods are two versatile adaptive importance ...
This paper deals with estimation of probabilities of rare events in static simulation models using a...
The variance minimization (VM) and cross-entropy (CE) methods are two versatile adaptive importance ...
Although importance sampling is an established and effective sampling and estimation technique, it b...
The variance minimization (VM) and cross-entropy (CE) methods are two versatile adaptive importance ...