Statistical inference with mixtures of normal components with unequal variances can be a challenging task, as the likelihood function is unbounded. We provide a new solution by maximizing a marginal likelihood corresponding to the maximal invariant under the group of location and scale transformations. This likelihood is bounded but cannot be calculated explicitly. We start from the simplest case, a two component normal mixture model and we write its likelihood as function of only three parameters, not five. As an innovation in simulated likelihood methodology, we show that if one uses importance sampling to simulate the likelihood, one can directly use an EM algorithm on the objective function. We also offer an innovation in our importance...
Analytical results for reducing the parameter space dimension when computing the marginal likelihood...
The Hessian of the multivariate normal mixture model is derived, and estimators of the information m...
Finite normal mixture models are often used to model the data coming from a population which consist...
AbstractMultivariate normal mixtures provide a flexible model for high-dimensional data. They are wi...
Existence and consistency of the Maximum Likelihood estimator of the parameters of heterogeneous mix...
A straightforward application of the method of maximum likelihood to a mixture of normal distributio...
Although normal mixture models have received great attention and are commonly used in different fiel...
A popular way to account for unobserved heterogeneity is to assume that the data are drawn from a fi...
A popular way to account for unobserved heterogeneity is to assume that the data are drawn from a fi...
Although normal mixture models have received great attention and are commonly used in different fiel...
A popular way to account for unobserved heterogeneity is to assume that the data are drawn from a fi...
We consider some of the problems associated with likelihood estimation in the context of a mixture o...
The marginal likelihood is a central tool for drawing Bayesian inference about the number of compone...
Abstract. The EM algorithm for Gaussian mixture models often gets caught in local maxima of the like...
In this note, we propose a simple, easily implemented procedure to find a local maximize of the like...
Analytical results for reducing the parameter space dimension when computing the marginal likelihood...
The Hessian of the multivariate normal mixture model is derived, and estimators of the information m...
Finite normal mixture models are often used to model the data coming from a population which consist...
AbstractMultivariate normal mixtures provide a flexible model for high-dimensional data. They are wi...
Existence and consistency of the Maximum Likelihood estimator of the parameters of heterogeneous mix...
A straightforward application of the method of maximum likelihood to a mixture of normal distributio...
Although normal mixture models have received great attention and are commonly used in different fiel...
A popular way to account for unobserved heterogeneity is to assume that the data are drawn from a fi...
A popular way to account for unobserved heterogeneity is to assume that the data are drawn from a fi...
Although normal mixture models have received great attention and are commonly used in different fiel...
A popular way to account for unobserved heterogeneity is to assume that the data are drawn from a fi...
We consider some of the problems associated with likelihood estimation in the context of a mixture o...
The marginal likelihood is a central tool for drawing Bayesian inference about the number of compone...
Abstract. The EM algorithm for Gaussian mixture models often gets caught in local maxima of the like...
In this note, we propose a simple, easily implemented procedure to find a local maximize of the like...
Analytical results for reducing the parameter space dimension when computing the marginal likelihood...
The Hessian of the multivariate normal mixture model is derived, and estimators of the information m...
Finite normal mixture models are often used to model the data coming from a population which consist...