We propose an efficient approach for the computation of cumulative distribution functions of N correlated Rayleigh or exponential random variables (RVs) for arbitrary covariance matrices, which arise in the design and analysis of many wireless systems. Compared to the approaches in the literature, it employs a fast and accurate randomized quasi-Monte Carlo method that markedly reduces the computational complexity by several orders of magnitude as N or the correlation among the RVs increases. Numerical results show that an order of magnitude larger values of N can now be computed for. Its application to the performance analysis of selection combining is also shown
Obtaining tractable and compact expressions for cumulative distribution functions (cdfs) of multivar...
Under even degrees of freedom, new single-integral and infinite-summation selection combiner output ...
The distributions of random variables are of interest in many areas of science. In this paper, the p...
In this paper, expressions for multivariate Rayleigh and exponential probability density functions (...
Based on our previous works, we revise a simple series expansion for multivariate probability densit...
A simple and efficient method for generating correlated multivariate Weibull random variables with a...
The numerical computation of a multivariate normal or t probability is often a difficult problem. Re...
Based on our previous works, we revise a simple series expansion for multivariate probability densit...
In this paper, an exact new closed formula for the multivariate α-μ joint probability density functi...
The numerical computation of a multivariate normal or t probability is often a difficult problem. Re...
Abstract—In this letter, an efficient approach for the evaluation of the Nakagami- multivariate prob...
A recent technique for generating two spatially correlated Rayleigh fading envelope sequences is gen...
The statistical properties of the multivariate gamma-gamma (Gamma Gamma) distribution with arbitrary...
Abstract—The statistical properties of the multivariate Gamma-Gamma () distribution with arbitrary c...
A recent technique for generating two spatially correlated Rayleigh fading envelope sequences is gen...
Obtaining tractable and compact expressions for cumulative distribution functions (cdfs) of multivar...
Under even degrees of freedom, new single-integral and infinite-summation selection combiner output ...
The distributions of random variables are of interest in many areas of science. In this paper, the p...
In this paper, expressions for multivariate Rayleigh and exponential probability density functions (...
Based on our previous works, we revise a simple series expansion for multivariate probability densit...
A simple and efficient method for generating correlated multivariate Weibull random variables with a...
The numerical computation of a multivariate normal or t probability is often a difficult problem. Re...
Based on our previous works, we revise a simple series expansion for multivariate probability densit...
In this paper, an exact new closed formula for the multivariate α-μ joint probability density functi...
The numerical computation of a multivariate normal or t probability is often a difficult problem. Re...
Abstract—In this letter, an efficient approach for the evaluation of the Nakagami- multivariate prob...
A recent technique for generating two spatially correlated Rayleigh fading envelope sequences is gen...
The statistical properties of the multivariate gamma-gamma (Gamma Gamma) distribution with arbitrary...
Abstract—The statistical properties of the multivariate Gamma-Gamma () distribution with arbitrary c...
A recent technique for generating two spatially correlated Rayleigh fading envelope sequences is gen...
Obtaining tractable and compact expressions for cumulative distribution functions (cdfs) of multivar...
Under even degrees of freedom, new single-integral and infinite-summation selection combiner output ...
The distributions of random variables are of interest in many areas of science. In this paper, the p...