Importance Sampling (IS) is a method for approximating expectations under a target distribution using independent samples from a proposal distribution and the associated importance weights. In many applications, the target distribution is known only up to a normalization constant, in which case self-normalized IS (SNIS) can be used. While the use of self-normalization can have a positive effect on the dispersion of the estimator, it introduces bias. In this work, we propose a new method, BR-SNIS, whose complexity is essentially the same as that of SNIS and which significantly reduces bias without increasing the variance. This method is a wrapper in the sense that it uses the same proposal samples and importance weights as SNIS, but makes cl...
Importance sampling (IS) is a well-known Monte Carlo method, widely used to approximate a distributi...
The problem we consider is that of generating representative point sets from a distribution known up...
Motivated by the increasing adoption of models which facilitate greater automation in risk managemen...
Importance Sampling (IS) is a method for approximating expectations under a target distribution usin...
The importance sampling (IS) method lies at the core of many Monte Carlo-based techniques. IS allows...
International audienceMonte Carlo methods rely on random sampling to compute and approximate expecta...
International audienceSequential importance sampling algorithms have been defined to estimate likeli...
For importance sampling (IS), multiple proposals can be combined to address different aspects of a t...
Importance sampling (IS) is a powerful Monte Carlo methodology for the approximation of intractable ...
In general, the naive importance sampling (IS) estimator does not work well in examples involving si...
The normalized importance sampling estimator allows the target density f to be known only up to a mu...
The efficient importance sampling (EIS) method is a general principle for the nu-merical evaluation ...
Importance sampling is often used in machine learning when training and testing data come from diffe...
Importance Sampling (IS) has been widely used to reduce the simulation time of complex communication...
International audienceImportance sampling (IS) is a powerful Monte Carlo methodology for the approxi...
Importance sampling (IS) is a well-known Monte Carlo method, widely used to approximate a distributi...
The problem we consider is that of generating representative point sets from a distribution known up...
Motivated by the increasing adoption of models which facilitate greater automation in risk managemen...
Importance Sampling (IS) is a method for approximating expectations under a target distribution usin...
The importance sampling (IS) method lies at the core of many Monte Carlo-based techniques. IS allows...
International audienceMonte Carlo methods rely on random sampling to compute and approximate expecta...
International audienceSequential importance sampling algorithms have been defined to estimate likeli...
For importance sampling (IS), multiple proposals can be combined to address different aspects of a t...
Importance sampling (IS) is a powerful Monte Carlo methodology for the approximation of intractable ...
In general, the naive importance sampling (IS) estimator does not work well in examples involving si...
The normalized importance sampling estimator allows the target density f to be known only up to a mu...
The efficient importance sampling (EIS) method is a general principle for the nu-merical evaluation ...
Importance sampling is often used in machine learning when training and testing data come from diffe...
Importance Sampling (IS) has been widely used to reduce the simulation time of complex communication...
International audienceImportance sampling (IS) is a powerful Monte Carlo methodology for the approxi...
Importance sampling (IS) is a well-known Monte Carlo method, widely used to approximate a distributi...
The problem we consider is that of generating representative point sets from a distribution known up...
Motivated by the increasing adoption of models which facilitate greater automation in risk managemen...