Ant Colony Optimization, Genetic Programming and a hybrid approach for credit scoring: A comparative study

Rojin Aliehyaei, Shamim Khan
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引用次数: 5

Abstract

Credit scoring is a commonly used method for evaluating the risk involved in granting credits. Both Genetic Programming (GP) and Ant Colony Optimization (ACO) have been investigated in the past as possible tools for credit scoring. This paper reports an investigation into the relative performances of GP, ACO and a new hybrid GP-ACO approach, which relies on the ACO technique to produce the initial populations for the GP technique. Performance of the hybrid approach has been compared with both the GP and ACO approaches using two well-known benchmark data sets. Experimental results demonstrate the dependence of GP and ACO classification accuracies on the input data set. For any given data set, the hybrid approach performs better than the worse of the other two methods. Results also show that use of ACO in the hybrid approach has only a limited impact in improving GP performance.
蚁群优化、遗传规划与混合信用评分方法之比较研究
信用评分是一种常用的评估授信风险的方法。遗传规划(GP)和蚁群优化(ACO)在过去被研究作为信用评分的可能工具。本文研究了遗传算法与蚁群算法的相对性能,以及一种基于蚁群算法生成遗传算法初始种群的新型遗传算法-蚁群算法。使用两个众所周知的基准数据集,将混合方法的性能与GP和ACO方法进行了比较。实验结果表明,遗传算法和蚁群算法的分类精度依赖于输入数据集。对于任何给定的数据集,混合方法的性能优于其他两种方法中的较差方法。结果还表明,在混合方法中使用蚁群算法对提高GP性能的影响有限。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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