Combining white box models, black box machines and human interventions for interpretable decision strategies

IF 1.9 3区 心理学 Q2 PSYCHOLOGY, MULTIDISCIPLINARY
Gregory Gadzinski, Alessio Castello
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引用次数: 1

Abstract

Granting a short-term loan is a critical decision. A great deal of research has concerned the prediction of credit default, notably through Machine Learning (ML) algorithms. However, given that their black-box nature has sometimes led to unwanted outcomes, comprehensibility in ML guided decision-making strategies has become more important. In many domains, transparency and accountability are no longer optional. In this article, instead of opposing white-box against black-box models, we use a multi-step procedure that combines the Fast and Frugal Tree (FFT) methodology of Martignon et al. (2005) and Phillips et al. (2017) with the extraction of post-hoc explainable information from ensemble ML models. New interpretable models are then built thanks to the inclusion of explainable ML outputs chosen by human intervention. Our methodology improves significantly the accuracy of the FFT predictions while preserving their explainable nature. We apply our approach to a dataset of short-term loans granted to borrowers in the UK, and show how complex machine learning can challenge simpler machines and help decision makers.
结合白盒模型,黑盒机器和人为干预的可解释决策策略
发放短期贷款是一个关键的决定。大量的研究都是关于信用违约的预测,特别是通过机器学习(ML)算法。在许多领域,透明度和问责制不再是可有可无的。在本文中,我们没有将白盒模型与黑盒模型对立,而是使用了一个多步骤的过程,该过程结合了Martignon等人(2005)和Phillips等人(2017)的快速节俭树(FFT)方法,并从集成ML模型中提取事后可解释的信息。由于包含了由人为干预选择的可解释的ML输出,因此构建了新的可解释模型。我们的方法显著提高了FFT预测的准确性,同时保留了其可解释性。我们将我们的方法应用于英国借款人短期贷款的数据集,并展示了复杂的机器学习如何挑战更简单的机器并帮助决策者。
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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来源期刊
Judgment and Decision Making
Judgment and Decision Making PSYCHOLOGY, MULTIDISCIPLINARY-
CiteScore
4.40
自引率
8.00%
发文量
0
审稿时长
12 weeks
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