Abstract—We present an exact Bayesian treatment of a simple, yet sufficiently general probability distribution model. We consider piecewise-constant distributions @ A with uniform (second-order) prior over location of discontinuity points and assigned chances. The predictive distribution and the model complexity can be determined completely from the data in a computational time that is linear in the number of degrees of freedom and quadratic in the number of possible values of. Furthermore, exact values of the expectations of entropies and their variances can be computed with polynomial effort. The expectation of the mutual information becomes thus available, too, and a strict upper bound on its variance. The resulting algorithm is particul...
We consider Bayesian estimation of information-theoretic quantities from data, using a Dirichlet pr...
We present a unifying framework for exact and approximate inference in Bayesian networks. This frame...
The need to estimate smooth probability distributions (a.k.a. probability densities) from finite sam...
We present an exact Bayesian treatment of a simple, yet sufficiently general probability distributio...
The mutual information of two random variables ı and with joint probabilities {πij} is commonly us...
Mutual information is widely used, in a descriptive way, to measure the stochastic dependence of cat...
This copy of the thesis has been supplied on condition that anyone who consults it is understood to ...
In this thesis we start by providing some detail regarding how we arrived at our present understandi...
Given the joint chances of a pair of random variables one can compute quantities of interest, like t...
Inferring the value of a property of a large stochastic system is a difficult task when the number o...
This paper is a review of a particular approach to the method of maximum entropy as a general framew...
Given the joint chances of a pair of random variables one can compute quantities of interest, like t...
We present two classes of improved estimators for mutual information M(X,Y), from samples of random ...
Metaheuristics such as Estimation of Distribution Algorithms and the Cross-Entropy method use probab...
Mutual information is a measurable quantity of particular interest for several applications that int...
We consider Bayesian estimation of information-theoretic quantities from data, using a Dirichlet pr...
We present a unifying framework for exact and approximate inference in Bayesian networks. This frame...
The need to estimate smooth probability distributions (a.k.a. probability densities) from finite sam...
We present an exact Bayesian treatment of a simple, yet sufficiently general probability distributio...
The mutual information of two random variables ı and with joint probabilities {πij} is commonly us...
Mutual information is widely used, in a descriptive way, to measure the stochastic dependence of cat...
This copy of the thesis has been supplied on condition that anyone who consults it is understood to ...
In this thesis we start by providing some detail regarding how we arrived at our present understandi...
Given the joint chances of a pair of random variables one can compute quantities of interest, like t...
Inferring the value of a property of a large stochastic system is a difficult task when the number o...
This paper is a review of a particular approach to the method of maximum entropy as a general framew...
Given the joint chances of a pair of random variables one can compute quantities of interest, like t...
We present two classes of improved estimators for mutual information M(X,Y), from samples of random ...
Metaheuristics such as Estimation of Distribution Algorithms and the Cross-Entropy method use probab...
Mutual information is a measurable quantity of particular interest for several applications that int...
We consider Bayesian estimation of information-theoretic quantities from data, using a Dirichlet pr...
We present a unifying framework for exact and approximate inference in Bayesian networks. This frame...
The need to estimate smooth probability distributions (a.k.a. probability densities) from finite sam...