@techreport{2e800c624044463387031184e245a677,
title = "Monte Carlo Integration Using Importance Sampling and Gibbs Sampling",
abstract = "To evaluate the expectation of a simple function with respect to a complicated multivariate density Monte Carlo integration has become the main technique. Gibbs sampling and importance sampling are the most popular methods for this task. In this contribution we propose a new simple general purpose importance sampling procedure. In a simulation study we compare the performance of this method with the performance of Gibbs sampling and of importance sampling using a vector of independent variates. It turns out that the new procedure is much better than independent importance sampling; up to dimension five it is also better than Gibbs sampling. The simulation results indicate that for higher dimensions Gibbs sampling is superior. (author's abstract)",
author = "Wolfgang H{\"o}rmann and Josef Leydold",
year = "2005",
doi = "10.57938/2e800c62-4044-4633-8703-1184e245a677",
language = "English",
series = "Preprint Series / Department of Applied Statistics and Data Processing",
number = "53",
publisher = "Department of Statistics and Mathematics, Abt. f. Angewandte Statistik u. Datenverarbeitung, WU Vienna University of Economics and Business",
edition = "February 2005",
type = "WorkingPaper",
institution = "Department of Statistics and Mathematics, Abt. f. Angewandte Statistik u. Datenverarbeitung, WU Vienna University of Economics and Business",
}