We propose a simple and efficient approach to building undirected probabilistic classification models (Markov networks) that extend naive Bayes classifiers and outperform existing directed probabilistic classifiers (Bayesian networks) of similar complexity. Our Markov network model is represented as a set of consistent probability distributions on subsets of variables. Inference with such a model can be done efficiently in closed form for problems like class probability estimation. We also propose a highly efficient Bayesian structure learning algorithm for conditional prediction problems, based on integrating along a hill-climb in the structure space. Our prior based on the degrees of freedom effectively prevents overfitting
Modern exact algorithms for structure learning in Bayesian networks first compute an exact local sco...
We present a general framework for defining priors on model structure and sampling from the posterio...
This work proposes and discusses an approach for inducing Bayesian classifiers aimed at balancing th...
This is a set of notes, summarizing what we talked about in the 10th recitation. They are not meant ...
The structure of a Bayesian network (BN) encodes variable independence. Learning the structure of a ...
Algorithms for inferring the structure of Bayesian networks from data have become an increasingly po...
AbstractMost of the Bayesian network-based classifiers are usually only able to handle discrete vari...
This work proposes and discusses an approach for inducing Bayesian classifiers aimed at balancing th...
To learn the network structures used in probabilistic models (e.g., Bayesian network), many research...
To learn the network structures used in probabilistic models (e.g., Bayesian network), many research...
Multi-dimensional Bayesian networks (MBCs) have been recently shown to perform efficient classificat...
The use of Bayesian networks for classification problems has received significant recent attention. ...
Learning accurate classifiers from preclassified data is a very active research topic in machine lea...
. Recent work in supervised learning has shown that a surprisingly simple Bayesian classifier with s...
Naive Bayes is among the simplest probabilistic classifiers. It often performs surprisingly well in ...
Modern exact algorithms for structure learning in Bayesian networks first compute an exact local sco...
We present a general framework for defining priors on model structure and sampling from the posterio...
This work proposes and discusses an approach for inducing Bayesian classifiers aimed at balancing th...
This is a set of notes, summarizing what we talked about in the 10th recitation. They are not meant ...
The structure of a Bayesian network (BN) encodes variable independence. Learning the structure of a ...
Algorithms for inferring the structure of Bayesian networks from data have become an increasingly po...
AbstractMost of the Bayesian network-based classifiers are usually only able to handle discrete vari...
This work proposes and discusses an approach for inducing Bayesian classifiers aimed at balancing th...
To learn the network structures used in probabilistic models (e.g., Bayesian network), many research...
To learn the network structures used in probabilistic models (e.g., Bayesian network), many research...
Multi-dimensional Bayesian networks (MBCs) have been recently shown to perform efficient classificat...
The use of Bayesian networks for classification problems has received significant recent attention. ...
Learning accurate classifiers from preclassified data is a very active research topic in machine lea...
. Recent work in supervised learning has shown that a surprisingly simple Bayesian classifier with s...
Naive Bayes is among the simplest probabilistic classifiers. It often performs surprisingly well in ...
Modern exact algorithms for structure learning in Bayesian networks first compute an exact local sco...
We present a general framework for defining priors on model structure and sampling from the posterio...
This work proposes and discusses an approach for inducing Bayesian classifiers aimed at balancing th...