A Metaheuristic Strategy for Feature Selection Problems: Application to Credit Risk Evaluation in Emerging Markets

Yue Liu, Adam Ghandar, G. Theodoropoulos
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引用次数: 2

Abstract

As countries develop digital financial infrastructure, a wide range of economic activities expand and grow in importance: from personal loans, to the rapidly developing networked microfinance industry, to mobile telephone services and real estate transactions and so on. Personal credit is also a foundation of trust for facilitation of integrated societal transactions more generally. In emerging markets there is, however, a gap between the requirement for establishing a credit or trust rating and the lack of a credit record. The development of methodologies for greater financial integration of growing economies has the potential to have a significant impact on increasing the GDP of developing economies (4-12% according to a recent McKinsey Global Institute report). In this paper, we develop and test a methodology for feature selection and test its in standard datasets from large institutions in mature market economies, and a recent dataset which illustrates characteristics of emerging markets. The results show performance in classification can be maintained while runtime can be reduced when using a GA for feature selection in a range of machine learning techniques.
特征选择问题的元启发式策略:在新兴市场信用风险评估中的应用
随着各国发展数字金融基础设施,范围广泛的经济活动不断扩大,重要性不断提高:从个人贷款到迅速发展的网络化小额信贷行业,再到移动电话服务和房地产交易等等。个人信用也是信任的基础,有助于更广泛地促进综合社会交易。然而,在新兴市场,建立信用或信任评级的要求与缺乏信用记录之间存在差距。发展中经济体金融一体化方法的发展有可能对发展中经济体GDP的增长产生重大影响(根据麦肯锡全球研究所最近的一份报告,GDP增长幅度为4-12%)。在本文中,我们开发并测试了一种特征选择方法,并在来自成熟市场经济体的大型机构的标准数据集和一个说明新兴市场特征的最新数据集中进行了测试。结果表明,在一系列机器学习技术中,使用遗传算法进行特征选择可以在减少运行时间的同时保持分类性能。
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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