Importance sampling (IS) is a Monte Carlo technique that relies on weighted samples, simulated from a proposal distribution, to estimate intractable integrals. The quality of the estimators improves with the number of samples. However, for achieving a desired quality of estimation, the required number of samples is unknown and depends on the quantity of interest, the estimator, and the chosen proposal. We present a sequential stopping rule that terminates simulation when the overall variability in estimation is relatively small. The proposed methodology closely connects to the idea of an effective sample size in IS and overcomes crucial shortcomings of existing metrics, e.g., it acknowledges multivariate estimation problems. Our stopping ru...
We consider importance sampling (IS) to increase the efficiency of Monte Carlo integration, especial...
This brief paper is an exploratory investigation of how we can apply sensitivity analysis over impor...
The basic idea of importance sampling is to use independent samples from a proposal measure in order...
In this paper, a sequential stopping rule for the estimation of a probability p by means of Monte Ca...
The importance sampling (IS) method lies at the core of many Monte Carlo-based techniques. IS allows...
Importance sampling (IS) is an important technique to reduce the estimation variance in Monte Carlo ...
In general, the naive importance sampling (IS) estimator does not work well in examples involving si...
Importance weighting is a general way to adjust Monte Carlo integration to account for draws from th...
Despite the development of sophisticated techniques such as sequential Monte Carlo, importance sampl...
The complexity of integrands in modern scientific, industrial and financial problems increases rapid...
Importance sampling (IS) is valuable in reducing the variance of Monte Carlo sampling for many areas...
Thesis (Ph.D.)--Boston University PLEASE NOTE: Boston University Libraries did not receive an Autho...
In the present work we study the important sampling method. This method serves as a variance reducti...
In this work we show how to resolve, at least partially, the curse of dimensionality of likelihood r...
The effective sample size (ESS) is widely used in sample-based simulation methods for assessing the ...
We consider importance sampling (IS) to increase the efficiency of Monte Carlo integration, especial...
This brief paper is an exploratory investigation of how we can apply sensitivity analysis over impor...
The basic idea of importance sampling is to use independent samples from a proposal measure in order...
In this paper, a sequential stopping rule for the estimation of a probability p by means of Monte Ca...
The importance sampling (IS) method lies at the core of many Monte Carlo-based techniques. IS allows...
Importance sampling (IS) is an important technique to reduce the estimation variance in Monte Carlo ...
In general, the naive importance sampling (IS) estimator does not work well in examples involving si...
Importance weighting is a general way to adjust Monte Carlo integration to account for draws from th...
Despite the development of sophisticated techniques such as sequential Monte Carlo, importance sampl...
The complexity of integrands in modern scientific, industrial and financial problems increases rapid...
Importance sampling (IS) is valuable in reducing the variance of Monte Carlo sampling for many areas...
Thesis (Ph.D.)--Boston University PLEASE NOTE: Boston University Libraries did not receive an Autho...
In the present work we study the important sampling method. This method serves as a variance reducti...
In this work we show how to resolve, at least partially, the curse of dimensionality of likelihood r...
The effective sample size (ESS) is widely used in sample-based simulation methods for assessing the ...
We consider importance sampling (IS) to increase the efficiency of Monte Carlo integration, especial...
This brief paper is an exploratory investigation of how we can apply sensitivity analysis over impor...
The basic idea of importance sampling is to use independent samples from a proposal measure in order...