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Two Stage Fuzzy Clustering Based on Latent Knowledge Discovery and Its Application in the Credit Market

机译:基于潜在知识发现的两阶段模糊聚类及其在信贷市场中的应用

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The aim of this paper is to adopt two-stage classification methods, and to apply fuzzy clustering analysis for mining data in the credit market in order to reflect the characteristic type knowledge of common nature of the similar things and different type characteristic knowledge of dissimilar things. First of all, the paper carries on attribute normalization of multi-factors which influence banks credit, computes fuzzy analogical relation coefficient, sets the threshold level to alpha by considering the competition and social credit risks state in the credit market, and selects borrowers through transfer closure algorithm. Second, it makes initial classification on samples according to the coefficient characteristic of fuzzy relation; third, it improves fuzzy clustering method which the fussy clustering itself has fuzzy nature and the algorithm. Finally the paper provides a case study about knowledge of credit mining in the financial market
机译:本文的目的是采用两阶段分类方法,并对信贷市场中的挖掘数据进行模糊聚类分析,以反映相似事物共有性质的特征类型知识和异事物事物的不同类型特征知识。 。首先,对影响银行信贷的多因素进行属性归一化,计算模糊类比系数,通过考虑信贷市场中的竞争和社会信贷风险状况,将阈值水平设置为α,并通过转移选择借款人。封闭算法。其次,根据模糊关系的系数特征对样本进行初始分类。第三,改进了模糊聚类方法,模糊聚类本身具有模糊性和算法。最后,本文提供了一个有关金融市场中信用挖掘知识的案例研究。

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