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首页> 外文期刊>The international arab journal of information technology >Combination of Feature Selection and Optimized Fuzzy Apriori Rules: The Case of Credit Scoring
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Combination of Feature Selection and Optimized Fuzzy Apriori Rules: The Case of Credit Scoring

机译:特征选择与优化模糊先验规则相结合:以信用评分为例

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摘要

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 (CARD, 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.
机译:信用评分是一个重要的主题,银行从贷款申请者那里收集不同的数据,以做出适当和正确的决定。规则库在信用决策中是最喜欢的,因为它们能够明确地区分良好和不良申请人。本文结合模糊先验使用四种特征选择方法作为特征预处理。这些方法是逐步回归,分类和回归树(CARD),相关矩阵和主成分分析(PCA);应用粒子群算法通过寻找不同的支持度和置信度来找到最佳模糊先验规则。 (UCI)和一个伊朗银行数据集,在准确性,规则数量和特征数量方面比较了不同的特征选择方法,并使用T检验进行了比较;结果表明,模糊先验与PCA相结合可创建紧凑的规则库,与单一模糊先验模型和其他组合特征选择方法相比,具有更好的结果。

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