We present an extension to Jaynes’ maximum entropy principle that incorporates latent variables. The principle of latent maximum entropy we propose is different from both Jaynes’ maximum entropy principle and maximum likelihood estimation, but can yield better estimates in the presence of hidden variables and limited training data. We first show that solving for a latent maximum entropy model poses a hard nonlinear constrained optimization problem in general. However, we then show that feasible solutions to this problem can be obtained efficiently for the special case of log-linear models---which forms the basis for an efficient approximation to the latent maximum entropy principle. We derive an algorithm that combines expectation-maximizat...
The concept of maximum entropy can be traced back along multiple threads to Biblical times. Only rec...
In many practical situations, we have only partial information about the probabilities. In some case...
A new approach for estimating the aggregate hierarchical logit model is presented. Though usually de...
We present an extension of Jaynes\u27 maximum entropy principle to handle latent variables. We use a...
We present a new approach to estimating mixture models based on a new inference principle we have pr...
We propose a framework for learning hidden-variable models by optimizing entropies, in which entropy...
We present a new approach to estimating mix-ture models based on a new inference princi-ple we have ...
We present a new statistical learning paradigm for Boltzmann machines based on a new inference pri...
This paper presents a new approach to estimating mixture models based on a recent inference principl...
In this letter, we elaborate on some of the issues raised by a recent paper by Neapolitan and Jiang ...
Maximum entropy (MaxEnt) framework has been studied extensively in supervised learning. Here, the go...
International audienceWe propose a new family of latent variable models called max-margin min-entrop...
The maximum entropy principle (MEP) is a powerful statistical inference tool that provides a rigorou...
Maximum entropy models are often used to describe supply and demand behavior in urban transportation...
A common statistical situation concerns inferring an unknown distribution Q(x) from a known distribu...
The concept of maximum entropy can be traced back along multiple threads to Biblical times. Only rec...
In many practical situations, we have only partial information about the probabilities. In some case...
A new approach for estimating the aggregate hierarchical logit model is presented. Though usually de...
We present an extension of Jaynes\u27 maximum entropy principle to handle latent variables. We use a...
We present a new approach to estimating mixture models based on a new inference principle we have pr...
We propose a framework for learning hidden-variable models by optimizing entropies, in which entropy...
We present a new approach to estimating mix-ture models based on a new inference princi-ple we have ...
We present a new statistical learning paradigm for Boltzmann machines based on a new inference pri...
This paper presents a new approach to estimating mixture models based on a recent inference principl...
In this letter, we elaborate on some of the issues raised by a recent paper by Neapolitan and Jiang ...
Maximum entropy (MaxEnt) framework has been studied extensively in supervised learning. Here, the go...
International audienceWe propose a new family of latent variable models called max-margin min-entrop...
The maximum entropy principle (MEP) is a powerful statistical inference tool that provides a rigorou...
Maximum entropy models are often used to describe supply and demand behavior in urban transportation...
A common statistical situation concerns inferring an unknown distribution Q(x) from a known distribu...
The concept of maximum entropy can be traced back along multiple threads to Biblical times. Only rec...
In many practical situations, we have only partial information about the probabilities. In some case...
A new approach for estimating the aggregate hierarchical logit model is presented. Though usually de...