In recent years there has been significant progress in algorithms and methods for inducing Bayesian networks from data. However, in complex data analysis problems, we need to go beyond being satisfied with inducing networks with high scores. We need to provide confidence measures on features of these networks: Is the existence of an edge between two nodes warranted? Is the Markov blanket of a given node robust? Can we say something about the ordering of the variables? We should be able to address these questions, even when the amount of data is not enough to induce a high scoring network. In this paper we propose Efron's Bootstrap as a computationally efficient approach for answering these questions. In addition, we propose to use thes...
AbstractThis article presents and analyzes algorithms that systematically generate random Bayesian n...
To learn the network structures used in probabilistic models (e.g., Bayesian network), many research...
In many domains, we are interested in analyzing the structure of the underlying distribution, e.g., ...
In recent years there has been significant progress in algorithms and methods for inducing Bayesian ...
2noLearning the structure of dependencies among multiple random variables is a problem of considerab...
\u3cp\u3eWe present a method for learning Bayesian networks from data sets containing thousands of v...
Recently several researchers have investi-gated techniques for using data to learn Bayesian networks...
A Bayesian network is a widely used probabilistic graphical model with applications in knowledge dis...
Bayesian Networks are an established computational approach for data driven network inference. Howev...
Background: Considerable progress has been made on algorithms for learning the structure of Bayesian...
The growing area of Data Mining defines a general framework for the induction of models from databas...
There is an increasing amount of literature focused on Bayesian computational methods to address pr...
We examine a graphical representation of uncertain knowledge called a Bayesian network. The represen...
This paper addresses the problem of learning Bayesian network structures from data by using an infor...
AbstractThis paper provides algorithms that use an information-theoretic analysis to learn Bayesian ...
AbstractThis article presents and analyzes algorithms that systematically generate random Bayesian n...
To learn the network structures used in probabilistic models (e.g., Bayesian network), many research...
In many domains, we are interested in analyzing the structure of the underlying distribution, e.g., ...
In recent years there has been significant progress in algorithms and methods for inducing Bayesian ...
2noLearning the structure of dependencies among multiple random variables is a problem of considerab...
\u3cp\u3eWe present a method for learning Bayesian networks from data sets containing thousands of v...
Recently several researchers have investi-gated techniques for using data to learn Bayesian networks...
A Bayesian network is a widely used probabilistic graphical model with applications in knowledge dis...
Bayesian Networks are an established computational approach for data driven network inference. Howev...
Background: Considerable progress has been made on algorithms for learning the structure of Bayesian...
The growing area of Data Mining defines a general framework for the induction of models from databas...
There is an increasing amount of literature focused on Bayesian computational methods to address pr...
We examine a graphical representation of uncertain knowledge called a Bayesian network. The represen...
This paper addresses the problem of learning Bayesian network structures from data by using an infor...
AbstractThis paper provides algorithms that use an information-theoretic analysis to learn Bayesian ...
AbstractThis article presents and analyzes algorithms that systematically generate random Bayesian n...
To learn the network structures used in probabilistic models (e.g., Bayesian network), many research...
In many domains, we are interested in analyzing the structure of the underlying distribution, e.g., ...