Given two discrete random variables X and Y, with probability distributions p = (p1,..., pn) and q = (q1,..., qm), respectively, denote by C(p, q) the set of all joint distributions of X and Y that have p and q as marginals. In this paper, we study the problem of finding the joint probability distribution in C (p, q) of minimum entropy (equivalently, the joint probability distribution that maximizes the mutual information between X and Y), and we discuss several situations where the need for this kind of optimization naturally arises. Since the optimization problem is known to be NP-hard, we give an efficient algorithm to find a joint probability distribution in C(p, q) with entropy exceeding the minimum possible by at most 1, thus providin...
In this paper we derive some upper bounds for the relative entropy D(p || q) of two probability dist...
AbstractIn this paper, we derive some upper bounds for the relative entropy D(p ‖ q) of two probabil...
<p>The maximum-entropy probability distribution with pairwise constraints for continuous random vari...
Given two discrete random variables X and Y, with probability distributions p = (p1,..., pn) and q =...
Given two discrete random variables X and Y, with probability distributions p = (p(1), . . . , p(n))...
Given two probability distributions p = (p_1 ,p_2 ,...,p_n ) and q = (q_1 ,q_2 ,...,q_m ) of two dis...
[[abstract]]The paper considers the role of entropy and other information theoretic concepts in the ...
We test the accuracy of various methods for approximating underspecified joint probability distribut...
An iterative method is presented which gives an optimum approximationto the joint probability distri...
We study the problem of identifying the causal relationship between two discrete random variables fr...
summary:How low can the joint entropy of $n$ $d$-wise independent (for $d\geq 2$) discrete random va...
In this paper, we propose new methods to approximate probability distributions that are incompletely...
In expert systems, we elicit the probabilities of different statements from the experts. However, to...
In probability theory, Bayesian statistics, artificial intelligence and database theory the minimum ...
Estimation of Distribution Algorithms (EDA) have been proposed as an extension of genetic algorithms...
In this paper we derive some upper bounds for the relative entropy D(p || q) of two probability dist...
AbstractIn this paper, we derive some upper bounds for the relative entropy D(p ‖ q) of two probabil...
<p>The maximum-entropy probability distribution with pairwise constraints for continuous random vari...
Given two discrete random variables X and Y, with probability distributions p = (p1,..., pn) and q =...
Given two discrete random variables X and Y, with probability distributions p = (p(1), . . . , p(n))...
Given two probability distributions p = (p_1 ,p_2 ,...,p_n ) and q = (q_1 ,q_2 ,...,q_m ) of two dis...
[[abstract]]The paper considers the role of entropy and other information theoretic concepts in the ...
We test the accuracy of various methods for approximating underspecified joint probability distribut...
An iterative method is presented which gives an optimum approximationto the joint probability distri...
We study the problem of identifying the causal relationship between two discrete random variables fr...
summary:How low can the joint entropy of $n$ $d$-wise independent (for $d\geq 2$) discrete random va...
In this paper, we propose new methods to approximate probability distributions that are incompletely...
In expert systems, we elicit the probabilities of different statements from the experts. However, to...
In probability theory, Bayesian statistics, artificial intelligence and database theory the minimum ...
Estimation of Distribution Algorithms (EDA) have been proposed as an extension of genetic algorithms...
In this paper we derive some upper bounds for the relative entropy D(p || q) of two probability dist...
AbstractIn this paper, we derive some upper bounds for the relative entropy D(p ‖ q) of two probabil...
<p>The maximum-entropy probability distribution with pairwise constraints for continuous random vari...