ATTENTION/WARNING - NE PAS DÉPOSER ICI/DO NOT SUBMIT HERE

Ceci est la version de TEST de DIAL.mem. Veuillez ne pas soumettre votre mémoire sur ce site mais bien à l'URL suivante: 'https://thesis.dial.uclouvain.be'.
This is the TEST version of DIAL.mem. Please use the following URL to submit your master thesis: 'https://thesis.dial.uclouvain.be'.
 

Using truncated vine copulas in Supervised Probabilistic Classification

(2020)

Files

Vogelaere184811002020.pdf
  • Open access
  • Adobe PDF
  • 760.57 KB

Details

Supervisors
Faculty
Degree label
Abstract
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.