AbstractMaximum likelihood estimation of the multivariatetdistribution, especially with unknown degrees of freedom, has been an interesting topic in the development of the EM algorithm. After a brief review of the EM algorithm and its application to finding the maximum likelihood estimates of the parameters of thetdistribution, this paper provides new versions of the ECME algorithm for maximum likelihood estimation of the multivariatetdistribution from data with possibly missing values. The results show that the new versions of the ECME algorithm converge faster than the previous procedures. Most important, the idea of this new implementation is quite general and useful for the development of the EM algorithm. Comparisons of different metho...
We address the problem of providing variances for parameter estimates obtained under a penalized lik...
This paper presents a brief comparison of two information geometries as they are used to describe th...
A straightforward application of the method of maximum likelihood to a mixture of normal distributio...
AbstractMaximum likelihood estimation of the multivariatetdistribution, especially with unknown degr...
A broadly applicable algorithm for computing maximum likelihood estimates from incomplete data is pr...
This paper discusses the EM algorithm. This algorithm is used, for example, to calculate maximum lik...
After its booming popularity of 30 years since the publication of Dempster et al. (1977), the EM alg...
Owing to their complex design and use of live subjects as experimental units, missing or incomplete ...
The Expectation-Maximization (EM) algorithm has become one of the methods of choice for maximum-like...
Abstract. The problem of estimating the parameters which determine a mixture density has been the su...
AbstractIt is well known that the maximum likelihood estimates (MLEs) of a multivariate normal distr...
Maximum likelihood algorithms for use with missing data are becoming common-place in microcomputer p...
This work presents an application of the EM-algorithm to two problems of estimation and testing in a...
this paper gives some background about maximum-likelihood estimation in section 2; considers the maj...
AbstractOne of the most powerful algorithms for maximum likelihood estimation for many incomplete-da...
We address the problem of providing variances for parameter estimates obtained under a penalized lik...
This paper presents a brief comparison of two information geometries as they are used to describe th...
A straightforward application of the method of maximum likelihood to a mixture of normal distributio...
AbstractMaximum likelihood estimation of the multivariatetdistribution, especially with unknown degr...
A broadly applicable algorithm for computing maximum likelihood estimates from incomplete data is pr...
This paper discusses the EM algorithm. This algorithm is used, for example, to calculate maximum lik...
After its booming popularity of 30 years since the publication of Dempster et al. (1977), the EM alg...
Owing to their complex design and use of live subjects as experimental units, missing or incomplete ...
The Expectation-Maximization (EM) algorithm has become one of the methods of choice for maximum-like...
Abstract. The problem of estimating the parameters which determine a mixture density has been the su...
AbstractIt is well known that the maximum likelihood estimates (MLEs) of a multivariate normal distr...
Maximum likelihood algorithms for use with missing data are becoming common-place in microcomputer p...
This work presents an application of the EM-algorithm to two problems of estimation and testing in a...
this paper gives some background about maximum-likelihood estimation in section 2; considers the maj...
AbstractOne of the most powerful algorithms for maximum likelihood estimation for many incomplete-da...
We address the problem of providing variances for parameter estimates obtained under a penalized lik...
This paper presents a brief comparison of two information geometries as they are used to describe th...
A straightforward application of the method of maximum likelihood to a mixture of normal distributio...