We study the performance of alternative sampling methods for estimating multivariate normal probabilities through the GHK simulator. The sampling methods are randomized versions of some quasi-Monte Carlo samples (Halton, Niederreiter, Niederreiter–Xing sequences and lattice points) and some samples based on orthogonal arrays (Latin hypercube, orthogonal array and orthogonal array based Latin hypercube samples). In general, these samples turn out to have a better performance than Monte Carlo and antithetic Monte Carlo samples. Improvements over these are large for low-dimensional (4 and 10) cases and still significant for dimensions as large as 50
Monte Carlo analysis has become nearly ubiquitous since its introduction, now over 65 years ago. It ...
The Latin Hypercube Sampling, LHS, plan was presented by McKay, Beckman and Conover (Technometrics, ...
An extensive literature in econometrics and in numerical analysis has considered the computationally...
We study the performance of alternative sampling methods for estimating multivariate normal probabil...
textabstractWe study the performance of alternative sampling methods for estimating multivariate nor...
Three sampling methods are compared for efficiency on a number of test problems of various complexit...
An extensive literature in econometrics and in numerical analysis has considered the problem of eval...
In recent years, new, intelligent and efficient sampling techniques for Monte Carlo simulation have ...
We discuss methods for calculating multivariate normal probabilities by simulation and two new Stata...
International audienceWe study the computation of Gaussian orthant probabilities, i.e. the probabili...
We discuss methods for calculating multivariate normal probabilities by simulation and two new Stata...
ghk2() estimates cumulative multivariate normal probabilities and optionally computes scores. It is ...
A new efficient method is proposed to compute multivariate normal probabilities over rectangles in h...
A major stumbling block in multivariate discrete data analysis is the problem of evaluating the outc...
We study the empirical size and power of some recently proposed tests for multivariate normality (MV...
Monte Carlo analysis has become nearly ubiquitous since its introduction, now over 65 years ago. It ...
The Latin Hypercube Sampling, LHS, plan was presented by McKay, Beckman and Conover (Technometrics, ...
An extensive literature in econometrics and in numerical analysis has considered the computationally...
We study the performance of alternative sampling methods for estimating multivariate normal probabil...
textabstractWe study the performance of alternative sampling methods for estimating multivariate nor...
Three sampling methods are compared for efficiency on a number of test problems of various complexit...
An extensive literature in econometrics and in numerical analysis has considered the problem of eval...
In recent years, new, intelligent and efficient sampling techniques for Monte Carlo simulation have ...
We discuss methods for calculating multivariate normal probabilities by simulation and two new Stata...
International audienceWe study the computation of Gaussian orthant probabilities, i.e. the probabili...
We discuss methods for calculating multivariate normal probabilities by simulation and two new Stata...
ghk2() estimates cumulative multivariate normal probabilities and optionally computes scores. It is ...
A new efficient method is proposed to compute multivariate normal probabilities over rectangles in h...
A major stumbling block in multivariate discrete data analysis is the problem of evaluating the outc...
We study the empirical size and power of some recently proposed tests for multivariate normality (MV...
Monte Carlo analysis has become nearly ubiquitous since its introduction, now over 65 years ago. It ...
The Latin Hypercube Sampling, LHS, plan was presented by McKay, Beckman and Conover (Technometrics, ...
An extensive literature in econometrics and in numerical analysis has considered the computationally...