summary:In probability theory, Bayesian statistics, artificial intelligence and database theory the minimum cross-entropy principle is often used to estimate a distribution with a given set $P$ of marginal distributions under the proportionality assumption with respect to a given ``prior'' distribution $q$. Such an estimation problem admits a solution if and only if there exists an extension of $P$ that is dominated by $q$. In this paper we consider the case that $q$ is not given explicitly, but is specified as the maximum-entropy extension of an auxiliary set $Q$ of distributions. There are three problems that naturally arise: (1) the existence of an extension of a distribution set (such as $P$ and $Q$), (2) the existence of an extension o...
Abstract—Computing the partition function and the marginals of a global probability distribution are...
In this article, we use the cross-entropy method for noisy optimization for fitting generalized line...
peer-reviewedThe minimum cross-entropy principle is an established technique for design of an unknow...
summary:In probability theory, Bayesian statistics, artificial intelligence and database theory the ...
In probability theory, Bayesian statistics, artificial intelligence and database theory the minimum ...
The principle of minimum cross-entropy is an inference procedure for specifying an updated probabili...
We study the problem of how to accurately model the data sets that contain a number of highly intert...
Given two discrete random variables X and Y, with probability distributions p=(p1, ⋯, pn) and q=(q1,...
Given two discrete random variables X and Y, with probability distributions p = (p1,..., pn) and q =...
Article dans revue scientifique avec comité de lecture.An adaptation algorithm using the theoretical...
We consider the problem of specifying the joint distribution of a collection of variables with maxim...
[[abstract]]The paper considers the role of entropy and other information theoretic concepts in the ...
In the field of optimization using probabilistic models of the search space, this thesis identifies ...
In this study we illustrate a Maximum Entropy (ME) methodology for modeling incomplete information a...
summary:This contribution introduces the marginal problem, where marginals are not given precisely, ...
Abstract—Computing the partition function and the marginals of a global probability distribution are...
In this article, we use the cross-entropy method for noisy optimization for fitting generalized line...
peer-reviewedThe minimum cross-entropy principle is an established technique for design of an unknow...
summary:In probability theory, Bayesian statistics, artificial intelligence and database theory the ...
In probability theory, Bayesian statistics, artificial intelligence and database theory the minimum ...
The principle of minimum cross-entropy is an inference procedure for specifying an updated probabili...
We study the problem of how to accurately model the data sets that contain a number of highly intert...
Given two discrete random variables X and Y, with probability distributions p=(p1, ⋯, pn) and q=(q1,...
Given two discrete random variables X and Y, with probability distributions p = (p1,..., pn) and q =...
Article dans revue scientifique avec comité de lecture.An adaptation algorithm using the theoretical...
We consider the problem of specifying the joint distribution of a collection of variables with maxim...
[[abstract]]The paper considers the role of entropy and other information theoretic concepts in the ...
In the field of optimization using probabilistic models of the search space, this thesis identifies ...
In this study we illustrate a Maximum Entropy (ME) methodology for modeling incomplete information a...
summary:This contribution introduces the marginal problem, where marginals are not given precisely, ...
Abstract—Computing the partition function and the marginals of a global probability distribution are...
In this article, we use the cross-entropy method for noisy optimization for fitting generalized line...
peer-reviewedThe minimum cross-entropy principle is an established technique for design of an unknow...