Title :
A possibilistic classification approach to handle continuous data
Author :
Bounhas, Myriam ; Mellouli, Khaled
Author_Institution :
Lab. LARODEC, ISG de Tunis, Le Bardo, Tunisia
Abstract :
Naive Possibilistic Network Classifiers (NPNC) have been recently used to accomplish the classification task in presence of uncertainty. Because they are mainly based on possibility theory, they run into problems when they are faced with imperfection where the possibility theory is the most convenient tool to represent it. In this paper we investigate to develop a new classification approach for perfect/imperfect (imprecise) continuous attribute values under the possibilistic framework based mainly on Possibilistic Networks. To build the naive possibilistic network classifier, we develop a procedure able to deal with perfect or imperfect dataset attributes which is used to classify new instances that may be characterized by imperfect attributes. We have tested our approach on several different datasets. The results show that this approach is efficient in the imperfect case.
Keywords :
data handling; pattern classification; possibility theory; Naive possibilistic network classifiers; continuous data handling; dataset attributes; Classification algorithms; Context; Iris; Possibility theory; Testing; Training; Uncertainty; Continuous data; Imperfection; Possibilistic Network Classifier; Possibilistic Networks; Possibility Theory;
Conference_Titel :
Computer Systems and Applications (AICCSA), 2010 IEEE/ACS International Conference on
Conference_Location :
Hammamet
Print_ISBN :
978-1-4244-7716-6
DOI :
10.1109/AICCSA.2010.5586964