Abstract The well known maximum-entropy principle due to Jaynes, which states that given mean parameters, the maximum entropy distribution matching them is in an exponential family has been very popular in machine learning due to its "Occam's razor" interpretation. Unfortunately, calculating the potentials in the maximumentropy distribution is intractable [BGS14]. We provide computationally efficient versions of this principle when the mean parameters are pairwise moments: we design distributions that approximately match given pairwise moments, while having entropy which is comparable to the maximum entropy distribution matching those moments. We additionally provide surprising applications of the approximate maximum entropy ...
Estimation of the probability density function from the statistical power moments presents a challen...
Abstract—In many practical situations, we have only partial information about the probabilities. In ...
A class of algorithms for approximation of the maximum entropy estimate of probability density func...
In many practical situations, we have only partial information about the probabilities. In some case...
We present an extension to Jaynes’ maximum entropy principle that incorporates latent variables. The...
Traditionally, the Method of (Shannon-Kullback's) Relative Entropy Maximization (REM) is considered ...
<p>The maximum-entropy probability distribution with pairwise constraints for continuous random vari...
We describe an algorithm to efficiently compute maximum entropy densities, i.e. densities maximizing...
The maximum entropy method (maxent) is widely used in the context of the moment problem which appear...
The recovering of a positive density function of which a finite number of moments are assigned is co...
Abstract: A key component of computational biology is to com-pare the results of computer mod-elling...
Estimation of Distribution Algorithms (EDA) have been proposed as an extension of genetic algorithms...
In this paper, we prove the continuity of maximum-entropy basis functions using variational analysis...
We present a systematic study of the reconstruction of non-negative functions via maximum entropy ap...
The maximum entropy principle introduced by Jaynes proposes that a data distribution should maximize...
Estimation of the probability density function from the statistical power moments presents a challen...
Abstract—In many practical situations, we have only partial information about the probabilities. In ...
A class of algorithms for approximation of the maximum entropy estimate of probability density func...
In many practical situations, we have only partial information about the probabilities. In some case...
We present an extension to Jaynes’ maximum entropy principle that incorporates latent variables. The...
Traditionally, the Method of (Shannon-Kullback's) Relative Entropy Maximization (REM) is considered ...
<p>The maximum-entropy probability distribution with pairwise constraints for continuous random vari...
We describe an algorithm to efficiently compute maximum entropy densities, i.e. densities maximizing...
The maximum entropy method (maxent) is widely used in the context of the moment problem which appear...
The recovering of a positive density function of which a finite number of moments are assigned is co...
Abstract: A key component of computational biology is to com-pare the results of computer mod-elling...
Estimation of Distribution Algorithms (EDA) have been proposed as an extension of genetic algorithms...
In this paper, we prove the continuity of maximum-entropy basis functions using variational analysis...
We present a systematic study of the reconstruction of non-negative functions via maximum entropy ap...
The maximum entropy principle introduced by Jaynes proposes that a data distribution should maximize...
Estimation of the probability density function from the statistical power moments presents a challen...
Abstract—In many practical situations, we have only partial information about the probabilities. In ...
A class of algorithms for approximation of the maximum entropy estimate of probability density func...