keyboard_arrow_up
A Boolean Modeling for Improving the Algorithm Apriori

Authors

Abdelhak Mansoul1 and Baghdad Atmani2, 1University of Skikda, Algeria and 2University of Oran ES-Senia, Algeria

Abstract

Mining association rules is one of the most important data mining tasks. Its purpose is to generate intelligible relations between attributes in a database. However, its use in practice is difficult and still raises several challenges, in particular, the number of learned rules is often very large. Several techniques for reducing the number of rules have been proposed as measures of quality, syntactic filtering constraints, etc. However, these techniques do not limit the shortcomings of these methods. In this paper, we propose a new approach to mine association, assisted by a Boolean modeling of results in order to mitigate the shortcomings mentioned above and propose a cellular automaton based on a boolean process for mining, optimizing, managing and representing of the learned rules.

Keywords

Cellular automaton, Data mining, Association Rules, Boolean modeling, Apriori-Cell

Full Text  Volume 4, Number 11