Title of article
Fuzzy Apriori Rule Extraction Using Multi-Objective Particle Swarm Optimization: The Case of Credit Scoring
Author/Authors
غلاميان ، محمدرضا نويسنده , , سادات رسول، سيد مهدي نويسنده School of Industrial Engineering, Iran University of Science and Technology, Tehran, Iran Sadatrasoul, Seyed Mahdi , حاجي محمدي، زينب نويسنده Department of computer science, Amirkabir University of Technology, Tehran, Iran Hajimohammadi, Zeynab
Issue Information
فصلنامه با شماره پیاپی 9 سال 2012
Pages
12
From page
53
To page
64
Abstract
There are many methods introduced to solve the credit scoring problem such as support vector machines, neural networks and rule based classifiers. Rule bases are more favourite in credit decision making because of their ability to explicitly distinguish between good and bad applicants.In this paper multi-objective particle swarm is applied to optimize fuzzy apriori rule base in credit scoring. Different support and confidence parameters generate different rule bases in apriori. Therefore Multi-objective particle swarm is used as a bio-inspired technique to search and find fuzzy support and confidence parameters, which gives the optimum rules in terms of maximum accuracy, minimum number of rules and minimum average length of rule. Australian, Germany UCI and a real Iranian commercial bank datasets is used to run the algorithm. The proposed method has shown better results compared to other classifiers.
Journal title
Journal of Advances in Computer Research
Serial Year
2012
Journal title
Journal of Advances in Computer Research
Record number
690533
Link To Document