In recent years, new, intelligent and efficient sampling techniques for Monte Carlo simulation have been developed. However, when such new techniques are introduced, they are compared to one or two existing techniques, and their performance is evaluated over two or three problems. A literature survey shows that benchmark studies, comparing the performance of several techniques over several problems, are rarely found. This article presents a benchmark study, comparing Simple or Crude Monte Carlo with four modern sampling techniques: Importance Sampling Monte Carlo, Asymptotic Sampling, Enhanced Sampling and Subset Simulation; which are studied over six problems. Moreover, these techniques are combined with three schemes for generating the un...
International audienceIn this paper, the recently developed Subset Simulation (SS) and Line Sampling...
The semi-Bayesian approach for constructing efficient stated choice designs requires the evaluation ...
Importance sampling has had its origin in Monte Carlo simulation and in the last 15 years or so, it ...
Monte Carlo analysis has become nearly ubiquitous since its introduction, now over 65 years ago. It ...
The complexity of integrands in modern scientific, industrial and financial problems increases rapid...
Standard Monte Carlo (sMC) simulation models have been widely used in AEC industry research to addre...
Monte Carlo Analysis is often regarded as the most simple and accurate reliability method. Be-sides ...
Three sampling methods are compared for efficiency on a number of test problems of various complexit...
A confiabilidade de estruturas apresenta sólidos desenvolvimentos teóricos e crescentes aplicações p...
Thesis (Ph.D.)--Boston University PLEASE NOTE: Boston University Libraries did not receive an Autho...
Sensitivity analysis is a key part of a comprehensive energy simulation study. Monte-Carlo technique...
In the present work we study the important sampling method. This method serves as a variance reducti...
Sequential Monte Carlo methods are powerful algorithms to sample from sequences of complex probabili...
The Markov chain Monte Carlo method is an important tool to estimate the average properties of syste...
Monte Carlo (MC) techniques are commonly used to perform uncertainty and sensitivity analyses. A key...
International audienceIn this paper, the recently developed Subset Simulation (SS) and Line Sampling...
The semi-Bayesian approach for constructing efficient stated choice designs requires the evaluation ...
Importance sampling has had its origin in Monte Carlo simulation and in the last 15 years or so, it ...
Monte Carlo analysis has become nearly ubiquitous since its introduction, now over 65 years ago. It ...
The complexity of integrands in modern scientific, industrial and financial problems increases rapid...
Standard Monte Carlo (sMC) simulation models have been widely used in AEC industry research to addre...
Monte Carlo Analysis is often regarded as the most simple and accurate reliability method. Be-sides ...
Three sampling methods are compared for efficiency on a number of test problems of various complexit...
A confiabilidade de estruturas apresenta sólidos desenvolvimentos teóricos e crescentes aplicações p...
Thesis (Ph.D.)--Boston University PLEASE NOTE: Boston University Libraries did not receive an Autho...
Sensitivity analysis is a key part of a comprehensive energy simulation study. Monte-Carlo technique...
In the present work we study the important sampling method. This method serves as a variance reducti...
Sequential Monte Carlo methods are powerful algorithms to sample from sequences of complex probabili...
The Markov chain Monte Carlo method is an important tool to estimate the average properties of syste...
Monte Carlo (MC) techniques are commonly used to perform uncertainty and sensitivity analyses. A key...
International audienceIn this paper, the recently developed Subset Simulation (SS) and Line Sampling...
The semi-Bayesian approach for constructing efficient stated choice designs requires the evaluation ...
Importance sampling has had its origin in Monte Carlo simulation and in the last 15 years or so, it ...