Discriminative learning of Bayesian network classifiers has recently received considerable attention from the machine learning community. This interest has yielded several publications where new methods for the discriminative learning of both structure and parameters have been proposed. In this paper we present an empirical study used to illustrate how discriminative learning performs with respect to generative learning using simple Bayesian network classifiers such as naive Bayes or TAN, and we discuss when and why a discriminative learning is preferred. We also analyzed how log-likelihood and conditional log-likelihood scores guide the learning process of Bayesian network classifiers
We introduce a Bayesian network classifier less restrictive than Naive Bayes (NB) and Tree Augmented...
AbstractThe margin criterion for parameter learning in graphical models gained significant impact ov...
Due to its causal semantics, Bayesian networks (BN) have been widely employed to discover the underl...
Recent advances have demonstrated substantial benefits from learning with both generative and discri...
The learning of Bayesian network models for classification is usually approached from a generative p...
In this paper, we introduce a new restricted Bayesian network classifier that extends naive Bayes by...
The use of Bayesian networks for classification problems has received significant recent attention. ...
In this paper, we empirically evaluate algorithms for learning four Bayesian network (BN) classifier...
. Recent work in supervised learning has shown that a surprisingly simple Bayesian classifier with s...
Bayesian network models are widely used for discriminative prediction tasks such as classification....
Although discriminative learning in graphical models generally improves classification results, the ...
Of crucial importance to the successful use of artificial neural networks for pattern classification...
Recent work in supervised learning has shown that a surpris-ingly simple Bayesian classifier with st...
We propose an efficient and parameter-free scoring criterion, the factorized conditional log-likelih...
Discriminative learning of the parameters in the naive Bayes model is known to be equivalent to a lo...
We introduce a Bayesian network classifier less restrictive than Naive Bayes (NB) and Tree Augmented...
AbstractThe margin criterion for parameter learning in graphical models gained significant impact ov...
Due to its causal semantics, Bayesian networks (BN) have been widely employed to discover the underl...
Recent advances have demonstrated substantial benefits from learning with both generative and discri...
The learning of Bayesian network models for classification is usually approached from a generative p...
In this paper, we introduce a new restricted Bayesian network classifier that extends naive Bayes by...
The use of Bayesian networks for classification problems has received significant recent attention. ...
In this paper, we empirically evaluate algorithms for learning four Bayesian network (BN) classifier...
. Recent work in supervised learning has shown that a surprisingly simple Bayesian classifier with s...
Bayesian network models are widely used for discriminative prediction tasks such as classification....
Although discriminative learning in graphical models generally improves classification results, the ...
Of crucial importance to the successful use of artificial neural networks for pattern classification...
Recent work in supervised learning has shown that a surpris-ingly simple Bayesian classifier with st...
We propose an efficient and parameter-free scoring criterion, the factorized conditional log-likelih...
Discriminative learning of the parameters in the naive Bayes model is known to be equivalent to a lo...
We introduce a Bayesian network classifier less restrictive than Naive Bayes (NB) and Tree Augmented...
AbstractThe margin criterion for parameter learning in graphical models gained significant impact ov...
Due to its causal semantics, Bayesian networks (BN) have been widely employed to discover the underl...