Title of article :
A Quantum Swarm Evolutionary Algorithm for mining association rules in large databases
Author/Authors :
Ykhlef, Mourad King Saud University - College of Computer and Information Sciences, Saudi Arabia
Abstract :
Association rule mining aims to extract the correlation or causal structure existing between a set of frequent items or attributes in a database. These associations are represented by mean of rules. Association rule mining methods provide a robust but non-linear approach to find associations. The search for association rules is an NP-complete problem. The complexities mainly arise in exploiting huge number of database transactions and items. In this article we propose a new algorithm to extract the best rules in a reasonable time of execution but without assuring always the optimal solutions. The new derived algorithm is based on Quantum Swarm Evolutionary approach; it gives better results compared to genetic algorithms.
Keywords :
Quantum Evolutionary Algorithm , Swarm intelligence , Association rule mining , Fitness
Journal title :
Journal Of King Saud University - Computer and Information Sciences
Journal title :
Journal Of King Saud University - Computer and Information Sciences