A Naive (or Idiot) Bayes network is a network with a single hypothesis node and several observations that are conditionally independent given the hypothesis. We recently surveyed a number of members of the UAI community and discovered a general lack of understanding of the implications of the Naive Bayes assumption on the kinds of problems that can be solved by these networks. It has long been recognized [Minsky 61] that if observations are binary, the decision surfaces in these networks are hyperplanes. We extend this result (hyperplane separability) to Naive Bayes networks with m-ary observations. In addition, we illustrate the effect of observation-observation dependencies on decision surfaces. Finally, we discuss the implications of the...
The problem of evaluating different learning rules and other statistical estimators is analysed. A n...
summary:For general Bayes decision rules there are considered perceptron approximations based on suf...
AbstractThis paper analyzes the problem of learning the structure of a Bayes net in the theoretical ...
The conditional independence assumption of naive Bayes essentially ignores attribute dependencies an...
. Recent work in supervised learning has shown that a surprisingly simple Bayesian classifier with s...
Recent work in supervised learning has shown that a surpris-ingly simple Bayesian classifier with st...
AbstractEmpirical evidence shows that naive Bayesian classifiers perform quite well compared to more...
Abstract. We investigate why discretization can be effective in naive-Bayes learning. We prove a the...
Naive Bayes is one of the most efficient and effective inductive learning algorithms for machine lea...
We consider a classical model of distributed decision making, originally developed in engineering co...
Naive Bayes (NB) is a simple but powerful tool for data classification. It is widely used in classif...
Abstract. The present paper addresses the issue of learning the underlying structure of a discrete b...
We analyze a model of learning and belief formation in networks in which agents follow Bayes ...
It is “well known” that in linear models: (1) testable constraints on the marginal distribution of o...
Abstract. Bayes-N is an algorithm for Bayesian network learning from data based on local measures of...
The problem of evaluating different learning rules and other statistical estimators is analysed. A n...
summary:For general Bayes decision rules there are considered perceptron approximations based on suf...
AbstractThis paper analyzes the problem of learning the structure of a Bayes net in the theoretical ...
The conditional independence assumption of naive Bayes essentially ignores attribute dependencies an...
. Recent work in supervised learning has shown that a surprisingly simple Bayesian classifier with s...
Recent work in supervised learning has shown that a surpris-ingly simple Bayesian classifier with st...
AbstractEmpirical evidence shows that naive Bayesian classifiers perform quite well compared to more...
Abstract. We investigate why discretization can be effective in naive-Bayes learning. We prove a the...
Naive Bayes is one of the most efficient and effective inductive learning algorithms for machine lea...
We consider a classical model of distributed decision making, originally developed in engineering co...
Naive Bayes (NB) is a simple but powerful tool for data classification. It is widely used in classif...
Abstract. The present paper addresses the issue of learning the underlying structure of a discrete b...
We analyze a model of learning and belief formation in networks in which agents follow Bayes ...
It is “well known” that in linear models: (1) testable constraints on the marginal distribution of o...
Abstract. Bayes-N is an algorithm for Bayesian network learning from data based on local measures of...
The problem of evaluating different learning rules and other statistical estimators is analysed. A n...
summary:For general Bayes decision rules there are considered perceptron approximations based on suf...
AbstractThis paper analyzes the problem of learning the structure of a Bayes net in the theoretical ...