Paper not available. Full text of working paper suppressed by author. We provide Markov chain Monte Carlo (MCMC) algorithms for computing the bandwidth matrix for multivariate kernel density estimation. Our approach is based on treating the elements of the bandwidth matrix as parameters to be estimated, which we do by optimizing the likelihood cross-validation criterion. Numerical results show that the resulting bandwidths are superior to all existing methods; for dimensions greater than two, our algorithm is the first practical method for estimating the optimal bandwidth matrix. Moreover, the MCMC algorithm for bandwidth selection for multivariate data has no increased difficulty as the dimension of data increases
Published online: 18 April 2011. In this paper, we present a Markov chain Monte Carlo (MCMC) simulat...
Kernel density estimation is a well known method involving a smoothing parameter (the bandwidth) tha...
Markov chain Monte Carlo (MCMC) methods are often used in Bayesian analysis to approximate expectati...
We provide Markov chain Monte Carlo (MCMC) algorithms for computing the bandwidth matrix for multiva...
In this investigation, the problem of estimating the probability density function of a function of m...
The performance of multivariate kernel density estimates depends crucially on the choice of bandwidt...
In this investigation, the problem of estimating the probability density function of a function of m...
Allthough nonparametric kernel density estimation is nowadays a standard technique in explorative da...
A crucial problem in kernel density estimates of a probability density function is the selection of ...
Recently, much progress has been made on understanding the bandwidth selection problem in kernel den...
Recently, much progress has been made on understanding the bandwidth selection problem in kernel den...
This paper focuses on the bandwidth selection in the kernel density estimation in the univariate cas...
We present a new method for data-based selection of the bandwidth in kernel density estimation which...
AbstractProgress in selection of smoothing parameters for kernel density estimation has been much sl...
Kernel density estimation is a well known method involving a smoothing parameter (the bandwidth) tha...
Published online: 18 April 2011. In this paper, we present a Markov chain Monte Carlo (MCMC) simulat...
Kernel density estimation is a well known method involving a smoothing parameter (the bandwidth) tha...
Markov chain Monte Carlo (MCMC) methods are often used in Bayesian analysis to approximate expectati...
We provide Markov chain Monte Carlo (MCMC) algorithms for computing the bandwidth matrix for multiva...
In this investigation, the problem of estimating the probability density function of a function of m...
The performance of multivariate kernel density estimates depends crucially on the choice of bandwidt...
In this investigation, the problem of estimating the probability density function of a function of m...
Allthough nonparametric kernel density estimation is nowadays a standard technique in explorative da...
A crucial problem in kernel density estimates of a probability density function is the selection of ...
Recently, much progress has been made on understanding the bandwidth selection problem in kernel den...
Recently, much progress has been made on understanding the bandwidth selection problem in kernel den...
This paper focuses on the bandwidth selection in the kernel density estimation in the univariate cas...
We present a new method for data-based selection of the bandwidth in kernel density estimation which...
AbstractProgress in selection of smoothing parameters for kernel density estimation has been much sl...
Kernel density estimation is a well known method involving a smoothing parameter (the bandwidth) tha...
Published online: 18 April 2011. In this paper, we present a Markov chain Monte Carlo (MCMC) simulat...
Kernel density estimation is a well known method involving a smoothing parameter (the bandwidth) tha...
Markov chain Monte Carlo (MCMC) methods are often used in Bayesian analysis to approximate expectati...