The EM algorithm is a popular method for computing maximum likelihood estimates. One of its drawbacks is that it does not produce standard errors as a by-product. We consider obtaining standard errors by numerical differentiation. Two approaches are considered. The first differentiates the Fisher score vector to yield the Hessian of the log-likelihood. The second differentiates the EM operator and uses an identity that relates its derivative to the Hessian of the log-likelihood. The well-known SEM algorithm uses the second approach. We consider three additional algorithms: one that uses the first approach and two that use the second. We evaluate the complexity and precision of these three and the SEM algorithm in seven examples. The first i...
The expectation–maximization (EM) algorithm is a seminal method to calculate the maximum likelihood ...
In this work, we propose to compare two algorithms to compute maximum likelihood estimates for the ...
We address the problem of providing variances for parameter estimates obtained under a penalized lik...
The EM algorithm is a popular method for computing maximum likelihood estimates. One of its drawback...
The EM algorithm is a popular method for computing maximum likelihood estimates. One of its drawback...
Abstract. In this thesis, two different methods of standard error esti-mation when using the EM-algo...
The EM algorithm is a popular method for computing maximum likelihood estimates. It tends to be nume...
This paper discusses the EM algorithm. This algorithm is used, for example, to calculate maximum lik...
this paper use consider the problem of providing standard errors of the component means in normal mi...
The EM algorithm is a popular method for maximum likelihood estimation. Its simplicity in many appli...
The EM algorithm is the standard tool for maximum likelihood estimation in finite mixture models. I...
The only single-source--now completely updated and revised--to offer a unified treatment of the theo...
The EM (Expectation-Maximization) algorithm is a general-purpose algorithm for maximum likelihood es...
A broadly applicable algorithm for computing maximum likelihood estimates from incomplete data is pr...
Owing to their complex design and use of live subjects as experimental units, missing or incomplete ...
The expectation–maximization (EM) algorithm is a seminal method to calculate the maximum likelihood ...
In this work, we propose to compare two algorithms to compute maximum likelihood estimates for the ...
We address the problem of providing variances for parameter estimates obtained under a penalized lik...
The EM algorithm is a popular method for computing maximum likelihood estimates. One of its drawback...
The EM algorithm is a popular method for computing maximum likelihood estimates. One of its drawback...
Abstract. In this thesis, two different methods of standard error esti-mation when using the EM-algo...
The EM algorithm is a popular method for computing maximum likelihood estimates. It tends to be nume...
This paper discusses the EM algorithm. This algorithm is used, for example, to calculate maximum lik...
this paper use consider the problem of providing standard errors of the component means in normal mi...
The EM algorithm is a popular method for maximum likelihood estimation. Its simplicity in many appli...
The EM algorithm is the standard tool for maximum likelihood estimation in finite mixture models. I...
The only single-source--now completely updated and revised--to offer a unified treatment of the theo...
The EM (Expectation-Maximization) algorithm is a general-purpose algorithm for maximum likelihood es...
A broadly applicable algorithm for computing maximum likelihood estimates from incomplete data is pr...
Owing to their complex design and use of live subjects as experimental units, missing or incomplete ...
The expectation–maximization (EM) algorithm is a seminal method to calculate the maximum likelihood ...
In this work, we propose to compare two algorithms to compute maximum likelihood estimates for the ...
We address the problem of providing variances for parameter estimates obtained under a penalized lik...