This paper presents a new approach to estimating mixture models based on a recent inference principle we have proposed: the latent maximum entropy principle (LME). LME is different from Jaynes\u27 maximum entropy principle, standard maximum likelihood, and maximum a posteriori probability estimation. We demonstrate the LME principle by deriving new algorithms for mixture model estimation, and show how robust new variants of the expectation maximization (EM) algorithm can be developed. We show that a regularized version of LME (RLME), is effective at estimating mixture models. It generally yields better results than plain LME, which in turn is often better than maximum likelihood and maximum a posterior estimation, particularly when inferrin...
This work considers the Expectation Maximization (EM) algorithm in the semi-supervised setting. Firs...
The Gaussian mixture model is widely applied in the fields of data analysis and information processi...
Abstract. We investigate the problem of estimating the proportion vector which maximizes the likelih...
We present a new approach to estimating mixture models based on a new inference principle we have pr...
We present a new approach to estimating mix-ture models based on a new inference princi-ple we have ...
This Article is brought to you for free and open access by the The Ohio Center of Excellence in Know...
We present an extension to Jaynes’ maximum entropy principle that incorporates latent variables. The...
We present a new statistical learning paradigm for Boltzmann machines based on a new inference pri...
A mixture model approach is developed that simultaneously estimates the posterior membership probabi...
Abstract: A mixture model approach is developed that simultaneously estimates the posterior membersh...
Statistical learning with missing or hidden information is ubiquitous in many practical problems. Fo...
A mixture model approach is developed that simultaneously estimates the posterior membership probabi...
Expectation-maximization (EM) algorithm has been used to maximize the likelihood function or posteri...
. We investigate the problem of estimating the proportion vector which maximizes the likelihood of a...
The Expectation–Maximization (EM) algorithm is a popular tool in a wide variety of statistical setti...
This work considers the Expectation Maximization (EM) algorithm in the semi-supervised setting. Firs...
The Gaussian mixture model is widely applied in the fields of data analysis and information processi...
Abstract. We investigate the problem of estimating the proportion vector which maximizes the likelih...
We present a new approach to estimating mixture models based on a new inference principle we have pr...
We present a new approach to estimating mix-ture models based on a new inference princi-ple we have ...
This Article is brought to you for free and open access by the The Ohio Center of Excellence in Know...
We present an extension to Jaynes’ maximum entropy principle that incorporates latent variables. The...
We present a new statistical learning paradigm for Boltzmann machines based on a new inference pri...
A mixture model approach is developed that simultaneously estimates the posterior membership probabi...
Abstract: A mixture model approach is developed that simultaneously estimates the posterior membersh...
Statistical learning with missing or hidden information is ubiquitous in many practical problems. Fo...
A mixture model approach is developed that simultaneously estimates the posterior membership probabi...
Expectation-maximization (EM) algorithm has been used to maximize the likelihood function or posteri...
. We investigate the problem of estimating the proportion vector which maximizes the likelihood of a...
The Expectation–Maximization (EM) algorithm is a popular tool in a wide variety of statistical setti...
This work considers the Expectation Maximization (EM) algorithm in the semi-supervised setting. Firs...
The Gaussian mixture model is widely applied in the fields of data analysis and information processi...
Abstract. We investigate the problem of estimating the proportion vector which maximizes the likelih...