Combination of Feature Selection and Optimized Fuzzy Apriori Rules: The Case of Credit Scoring
Journal: The International Arab Journal of Information Technology (Vol.12, No. 2)Publication Date: 2015-03-01
Authors : Seyed Sadatrasoul; Mohammad Gholamian; Kamran Shahanaghi;
Page : 138-145
Keywords : Fuzzy apriori; feature selection; particle swarm; credit scoring.;
Abstract
Credit scoring is an important topic and banks collect different data from their loan applicants to make appropriate and correct decisions. Rule bases are favourite in credit decision making because of their ability to explicitly distinguish between good and bad applicants. This paper, uses four feature selection approaches as features pre-processing combined with fuzzy apriori. These methods are stepwise regression, Classification And Regression Tree (CART), correlation matrix and Principle Component Analysis (PCA). Particle Swarm is applied to find the best fuzzy apriori rules by searching different support and confidence. Considering Australian and German University of California at Irvine (UCI) and an Iranian bank datasets, different feature selections methods are compared in terms of accuracy, number of rules and number of features. The results are compared using T test; it reveals that fuzzy apriori combined with PCA creates a compact rule base and shows better results than the single fuzzy apriori model and other combined feature selection methods.
Other Latest Articles
- Cloud Task Scheduling Based on Ant Colony Optimization
- A Multimodal Biometric System Based on Palmprint and Finger Knuckle Print Recognition Methods
- Chaotic Image Encryption using Modular Addition and Combinatorial Techniques
- A New Perspective on Principal Component Analysis using Inverse Covariance
- Towards Intelligence Engineering in Agent-Based Systems
Last modified: 2019-11-14 21:53:24