C5.0分类算法及其在银行个人信用评价中的应用

Su-lin PANG, Ji-zhang GONG
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引用次数: 103

摘要

本文主要研究商业银行的个人信用评价问题。个人信用记录包括数值数据和非数值数据。决策树是解决这类问题的一个很好的方法。今年,决策树的C4.5算法开始流行,但C5.0算法仍在进行中。本文通过在成本矩阵和成本敏感树中嵌入“助推”技术,对C5.0算法进行了深入研究,建立了商业银行个人信用评价的新模型。将新模型应用于德国某银行的个人信用记录评价,并将调整后的决策树模型与原决策树模型的结果进行了比较。比较表明,调整后的决策树模型更精确。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
C5.0 Classification Algorithm and Application on Individual Credit Evaluation of Banks

This article focuses on individual credit evaluation of commercial bank. The records of individual credit include both numerical and nonnumeric data. Decision tree is a good solution for this kind of issue. This year, the algorithm C4.5 of decision tree become popular, but C5.0 algorithm is still undergoing. In this article, we do some deep research on C5.0 algorithm by embedding “boosting” technology in cost matrix and cost-sensitive tree to establish a new model for individual credit evaluation of Commercial Bank. We apply our new model on evaluating the individual credit records of a German bank, and compared results of the adjusted decision tree model and the original one. The comparison shows that the adjusted decision tree model is more precise.

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