Estimating Continuous Distributions in Bayesian Classifiers
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Abstract
When modeling a probability distribution with a Bayesian network, we are faced with the problem of how to handle continuous variables. Most previous work has either solved the problem by discretizing, or assumed that the data are generated by a single Gaussian. In this paper we abandon the normality assumption and instead use statistical methods for nonparametric density estimation. For a naive Bayesian classifier, we present experimental results on a variety of natural and artificial domains, comparing two methods of density estimation: assuming normality and modeling each conditional distribution with a single Gaussian; and using nonparametric kernel density estimation. We observe large reductions in error…
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Keywords
- Kernel density estimation
- Artificial intelligence
- Density estimation
- Multivariate kernel density estimation
- Conditional probability distribution
- Kernel (algebra)
- Computer science
- Variable kernel density estimation
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