个人信用风险评估的机器学习和元启发式方法:系统文献综述。

IF 3.9 3区 医学 Q1 ENGINEERING, MULTIDISCIPLINARY
Álex Paz, Broderick Crawford, Eric Monfroy, José Barrera-García, Álvaro Peña Fritz, Ricardo Soto, Felipe Cisternas-Caneo, Andrés Yáñez
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引用次数: 0

摘要

信用风险评估在金融风险管理中起着至关重要的作用,其重点是预测借款人违约,以最大限度地减少损失并确保合规。本研究系统回顾了2019年至2023年间发表的23篇实证文章,重点介绍了机器学习和优化技术的集成,特别是生物启发的元启发式,用于个人信用风险评估中的特征选择。这些受自然启发的算法源自生物和生态过程,通过模仿自然智能来解决高维特征空间中的复杂问题,从而与受生物启发的原则保持一致。与先前的综述采用更广泛的范围,结合公司、主权和个人背景不同,本工作专门侧重于个人信用风险的方法策略。它对机器学习算法、特征选择方法和元启发式优化技术的使用进行了分类,包括遗传算法、粒子群优化和基于生物地理的优化。为了加强透明度和可比性,本综述还综合了跨基准数据集报告的分类性能指标,如准确性、AUC、f1分数和召回率。虽然由于研究方案的异质性,没有进行统一的实验比较,但这一结构化总结揭示了算法有效性和评估实践的一致趋势。本文最后提出了切实可行的建议,并概述了未来的研究方向,以提高信用风险建模的公平性、可扩展性和实时性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning and Metaheuristics Approach for Individual Credit Risk Assessment: A Systematic Literature Review.

Credit risk assessment plays a critical role in financial risk management, focusing on predicting borrower default to minimize losses and ensure compliance. This study systematically reviews 23 empirical articles published between 2019 and 2023, highlighting the integration of machine learning and optimization techniques, particularly bio-inspired metaheuristics, for feature selection in individual credit risk assessment. These nature-inspired algorithms, derived from biological and ecological processes, align with bio-inspired principles by mimicking natural intelligence to solve complex problems in high-dimensional feature spaces. Unlike prior reviews that adopt broader scopes combining corporate, sovereign, and individual contexts, this work focuses exclusively on methodological strategies for individual credit risk. It categorizes the use of machine learning algorithms, feature selection methods, and metaheuristic optimization techniques, including genetic algorithms, particle swarm optimization, and biogeography-based optimization. To strengthen transparency and comparability, this review also synthesizes classification performance metrics-such as accuracy, AUC, F1-score, and recall-reported across benchmark datasets. Although no unified experimental comparison was conducted due to heterogeneity in study protocols, this structured summary reveals consistent trends in algorithm effectiveness and evaluation practices. The review concludes with practical recommendations and outlines future research directions to improve fairness, scalability, and real-time application in credit risk modeling.

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来源期刊
Biomimetics
Biomimetics Biochemistry, Genetics and Molecular Biology-Biotechnology
CiteScore
3.50
自引率
11.10%
发文量
189
审稿时长
11 weeks
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