. We investigate the problem of estimating the proportion vector which maximizes the likelihood of a given sample for a mixture of given densities. We adapt a framework developed for supervised learning and give simple derivations for many of the standard iterative algorithms like gradient projection and EM. In this framework, the distance between the new and old proportion vectors is used as a penalty term. The square distance leads to the gradient projection update, and the relative entropy to a new update which we call the exponentiated gradient update (EGj ). Curiously, when a second order Taylor expansion of the relative entropy is used, we arrive at an update EMj which, for j = 1, gives the usual EM update. Experimentally, both the EM...
A popular way to account for unobserved heterogeneity is to assume that the data are drawn from a fi...
Abstract. In this note, we give necessary and sufficient conditions for a maximum-likelihood estimat...
We develop a general framework for proving rigorous guarantees on the performance of the EM algorith...
Abstract. We investigate the problem of estimating the proportion vector which maximizes the likelih...
this paper. Our experimental evidence suggests that setting j ? 1 results in a more effective update...
We build up the mathematical connection between the "Expectation-Maximization" (EM) algori...
Abstract. The problem of estimating the parameters which determine a mixture density has been the su...
In these notes, we present and review dierent methods based on maximum-likelihood estimation for lea...
Abstract Mixture proportion estimation (MPE) is a fundamental tool for solving a number of weakly su...
Abstract. This paper addresses the problem of obtaining numerically maximum-likelihood estimates of ...
The Expectation-Maximization (EM) algorithm is an iterative approach to maximum likelihood parameter...
Following my previous post on optimization and mixtures (here), Nicolas told me that my idea was pro...
A popular way to account for unobserved heterogeneity is to assume that the data are drawn from a fi...
This paper presents a new approach to estimating mixture models based on a recent inference principl...
The paper is framed within the literature around Louis’ identity for the observed information matrix...
A popular way to account for unobserved heterogeneity is to assume that the data are drawn from a fi...
Abstract. In this note, we give necessary and sufficient conditions for a maximum-likelihood estimat...
We develop a general framework for proving rigorous guarantees on the performance of the EM algorith...
Abstract. We investigate the problem of estimating the proportion vector which maximizes the likelih...
this paper. Our experimental evidence suggests that setting j ? 1 results in a more effective update...
We build up the mathematical connection between the "Expectation-Maximization" (EM) algori...
Abstract. The problem of estimating the parameters which determine a mixture density has been the su...
In these notes, we present and review dierent methods based on maximum-likelihood estimation for lea...
Abstract Mixture proportion estimation (MPE) is a fundamental tool for solving a number of weakly su...
Abstract. This paper addresses the problem of obtaining numerically maximum-likelihood estimates of ...
The Expectation-Maximization (EM) algorithm is an iterative approach to maximum likelihood parameter...
Following my previous post on optimization and mixtures (here), Nicolas told me that my idea was pro...
A popular way to account for unobserved heterogeneity is to assume that the data are drawn from a fi...
This paper presents a new approach to estimating mixture models based on a recent inference principl...
The paper is framed within the literature around Louis’ identity for the observed information matrix...
A popular way to account for unobserved heterogeneity is to assume that the data are drawn from a fi...
Abstract. In this note, we give necessary and sufficient conditions for a maximum-likelihood estimat...
We develop a general framework for proving rigorous guarantees on the performance of the EM algorith...