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Credit Scoring based on Hybrid Data Mining Classification

机译:基于混合数据挖掘分类的信用评分

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The credit scoring has been regarded as a critical topic. This study proposed four approaches combining with the NN (Neural Network) classifier for features selection that retains sufficient information for classification purpose. Two UCI data sets and different approaches combined with NN classifier were constructed by selecting features. NN classifier combines with conventional statistical LDA, Decision tree, Rough set and F-score approaches as features preprocessing step to optimize feature space by removing both irrelevant and redundant features. The procedure of the proposed algorithm is described first and then evaluated by their performances. The results are compared in combination with NN classifier and nonparametric Wilcoxon signed rank test will be held to show if there has any significant difference between these approaches. Our results suggest that hybrid credit scoring models are robust and effective in finding optimal subsets and the compound procedure is a promising method to the fields of data mining.
机译:信用评分一直被认为是一个至关重要的话题。这项研究提出了四种与NN(神经网络)分类器相结合的方法来进行特征选择,该方法保留了足够的信息用于分类。通过选择特征构造了两个UCI数据集和与NN分类器结合的不同方法。 NN分类器与传统的统计LDA,决策树,粗糙集和F分数方法相结合,作为特征预处理步骤,可通过删除无关和多余的特征来优化特征空间。首先描述了所提出算法的过程,然后通过其性能对其进行了评估。将结果与NN分类器进行比较,将进行非参数Wilcoxon符号秩检验,以表明这些方法之间是否存在任何显着差异。我们的结果表明,混合信用评分模型在寻找最佳子集方面既强大又有效,复合过程对于数据挖掘领域是一种很有前途的方法。

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