Probabilistic graphical models are a huge research field in artificial intelligence nowadays. The scope of this work is the study of directed graphical models for the representation of discrete distributions. Two of the main research topics related to this area focus on performing inference over graphical models and on learning graphical models from data. Traditionally, the inference process and the learning process have been treated separately, but given that the learned models structure marks the inference complexity, this kind of strategies will sometimes produce very inefficient models. With the purpose of learning thinner models, in this master thesis we propose a new model for the representation of network polynomials, which we call ...
Thesis (Ph.D.)--University of Washington, 2019The study of probabilistic graphical models (PGMs) is ...
AbstractThis article presents and analyzes algorithms that systematically generate random Bayesian n...
The problem of structure learning in Bayesian networks asks for a directed acyclic graph (DAG) that ...
One of the main research topics in machine learning nowa- days is the improvement of the inference ...
One of the main research topics in machine learning nowadays is the improvement of the inference an...
Discrete Graphical Models (GMs) represent joint functions over large sets of discrete variables as a...
We present new polynomial time algorithms for inference problems in Bayesian networks (BNs) when res...
With the increased availability of data for complex domains, it is desirable to learn Bayesian netwo...
Probabilistic graphical models constitute a fundamental tool for the development of intelligent sys...
Bounding the tree-width of a Bayesian network can reduce the chance of overfitting, and allows exact...
AbstractOne of the main approaches to performing computation in Bayesian networks (BNs) is clique tr...
This work presents novel algorithms for learning Bayesian networks of bounded treewidth. Both exact ...
We study the problem of learning the structure of an optimal Bayesian network when additional constr...
Abstract. Learning Bayesian networks with bounded tree-width has at-tracted much attention recently,...
Probability is a useful tool for reasoning when faced with uncertainty. Bayesian networks offer a co...
Thesis (Ph.D.)--University of Washington, 2019The study of probabilistic graphical models (PGMs) is ...
AbstractThis article presents and analyzes algorithms that systematically generate random Bayesian n...
The problem of structure learning in Bayesian networks asks for a directed acyclic graph (DAG) that ...
One of the main research topics in machine learning nowa- days is the improvement of the inference ...
One of the main research topics in machine learning nowadays is the improvement of the inference an...
Discrete Graphical Models (GMs) represent joint functions over large sets of discrete variables as a...
We present new polynomial time algorithms for inference problems in Bayesian networks (BNs) when res...
With the increased availability of data for complex domains, it is desirable to learn Bayesian netwo...
Probabilistic graphical models constitute a fundamental tool for the development of intelligent sys...
Bounding the tree-width of a Bayesian network can reduce the chance of overfitting, and allows exact...
AbstractOne of the main approaches to performing computation in Bayesian networks (BNs) is clique tr...
This work presents novel algorithms for learning Bayesian networks of bounded treewidth. Both exact ...
We study the problem of learning the structure of an optimal Bayesian network when additional constr...
Abstract. Learning Bayesian networks with bounded tree-width has at-tracted much attention recently,...
Probability is a useful tool for reasoning when faced with uncertainty. Bayesian networks offer a co...
Thesis (Ph.D.)--University of Washington, 2019The study of probabilistic graphical models (PGMs) is ...
AbstractThis article presents and analyzes algorithms that systematically generate random Bayesian n...
The problem of structure learning in Bayesian networks asks for a directed acyclic graph (DAG) that ...