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AUSAI
1998
Springer

Adjusted Probability Naive Bayesian Induction

13 years 8 months ago
Adjusted Probability Naive Bayesian Induction
Naive Bayesian classi ers utilise a simple mathematical model for induction. While it is known that the assumptions on which this model is based are frequently violated, the predictive accuracy obtained in discriminate classi cation tasks is surprisingly competitive in comparison to more complex induction techniques. Adjusted probability naive Bayesian induction adds a simple extension to the naive Bayesian classi er. A numeric weight is inferred for each class. During discriminate classi cation, the naive Bayesian probability of a class is multiplied by its weight to obtain an adjusted value. The use of this adjusted value in place of the naive Bayesian probability is shown to signi cantly improve predictive accuracy.
Geoffrey I. Webb, Michael J. Pazzani
Added 24 Aug 2010
Updated 24 Aug 2010
Type Conference
Year 1998
Where AUSAI
Authors Geoffrey I. Webb, Michael J. Pazzani
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