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Vogelaere184811002020.pdf
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- The objective of this paper is to address the problem of learning effective high-dimensional binary classifiers in domains with continuous features. In this context, we extend the naive Bayes classifier by evaluating the dependence structure between the features given the class with a truncated R-vine copula model.