The problem of calibrating relations from examples is a classical problem in learning theory. This problem has in particular been studied in the theory of empirical processes (providing asymptotic results), and through statistical learning theory. The application of learning theory to bayesian networks is still uncomplete and we propose a contribution, especially through the use of covering numbers. We deduce multiple corollaries, among which a non-frequentist approach for parameters learning and a score taking into account a measure of structural entropy that has never been taken into account before. We then investigate the algorithmic aspects of our theoretical solution, based on BFGS and adaptive refining of gradient calculus. Empirical r...
A Bayesian network (BN) is a probabilistic graphical model with applications in knowledge discovery ...
Bayesian networks are graphical models that represent the joint distributionof a set of variables us...
One of the main research topics in machine learning nowa- days is the improvement of the inference ...
The problem of calibrating relations from examples is a classical problem in learning theory. This p...
We propose and justify a better-than-frequentist approach for bayesian network parametrization, and ...
Beretta, S., Castelli, M., Gonçalves, I., Henriques, R., & Ramazzotti, D. (2018). Learning the struc...
Learning a Bayesian network consists in estimating the graph (structure) and the parameters of condi...
In this paper, we provide new complexity results for algorithms that learn discretevariable Bayesian...
The structure of a Bayesian network encodes most of the information about the probability distributi...
In recent years, graphical models have been successfully applied in several different disciplines, ...
We introduce a method for learning Bayesian networks that handles the discretization of continuous v...
AbstractThis paper provides algorithms that use an information-theoretic analysis to learn Bayesian ...
Bayesian networks have become a standard technique in the representation of uncertain knowledge. Thi...
Bayesian networks can be built based on knowledge, data, or both. Independent of the source of infor...
A Bayesian network is a widely used probabilistic graphical model with applications in knowledge dis...
A Bayesian network (BN) is a probabilistic graphical model with applications in knowledge discovery ...
Bayesian networks are graphical models that represent the joint distributionof a set of variables us...
One of the main research topics in machine learning nowa- days is the improvement of the inference ...
The problem of calibrating relations from examples is a classical problem in learning theory. This p...
We propose and justify a better-than-frequentist approach for bayesian network parametrization, and ...
Beretta, S., Castelli, M., Gonçalves, I., Henriques, R., & Ramazzotti, D. (2018). Learning the struc...
Learning a Bayesian network consists in estimating the graph (structure) and the parameters of condi...
In this paper, we provide new complexity results for algorithms that learn discretevariable Bayesian...
The structure of a Bayesian network encodes most of the information about the probability distributi...
In recent years, graphical models have been successfully applied in several different disciplines, ...
We introduce a method for learning Bayesian networks that handles the discretization of continuous v...
AbstractThis paper provides algorithms that use an information-theoretic analysis to learn Bayesian ...
Bayesian networks have become a standard technique in the representation of uncertain knowledge. Thi...
Bayesian networks can be built based on knowledge, data, or both. Independent of the source of infor...
A Bayesian network is a widely used probabilistic graphical model with applications in knowledge dis...
A Bayesian network (BN) is a probabilistic graphical model with applications in knowledge discovery ...
Bayesian networks are graphical models that represent the joint distributionof a set of variables us...
One of the main research topics in machine learning nowa- days is the improvement of the inference ...