Monotonic Neural Additive Models: Pursuing Regulated Machine Learning Models for Credit Scoring

Dangxing Chen, Weicheng Ye
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引用次数: 4

Abstract

The forecasting of credit default risk has been an active research field for several decades. Historically, logistic regression has been used as a major tool due to its compliance with regulatory requirements: transparency, explainability, and fairness. In recent years, researchers have increasingly used complex and advanced machine learning methods to improve prediction accuracy. Even though a machine learning method could potentially improve the model accuracy, it complicates simple logistic regression, deteriorates explainability, and often violates fairness. In the absence of compliance with regulatory requirements, even highly accurate machine learning methods are unlikely to be accepted by companies for credit scoring. In this paper, we introduce a novel class of monotonic neural additive models, which meet regulatory requirements by simplifying neural network architecture and enforcing monotonicity. By utilizing the special architectural features of the neural additive model, the monotonic neural additive model penalizes monotonicity violations effectively. Consequently, the computational cost of training a monotonic neural additive model is similar to that of training a neural additive model, as a free lunch. We demonstrate through empirical results that our new model is as accurate as black-box fully-connected neural networks, providing a highly accurate and regulated machine learning method.
单调神经加性模型:追求信用评分的调节机器学习模型
几十年来,信用违约风险预测一直是一个活跃的研究领域。从历史上看,逻辑回归一直被用作主要工具,因为它符合监管要求:透明度、可解释性和公平性。近年来,研究人员越来越多地使用复杂和先进的机器学习方法来提高预测精度。尽管机器学习方法可以潜在地提高模型的准确性,但它使简单的逻辑回归变得复杂,降低了可解释性,并且经常违反公平性。在不遵守监管要求的情况下,即使是高度精确的机器学习方法也不太可能被公司接受用于信用评分。本文引入了一类新的单调神经加性模型,该模型通过简化神经网络结构和增强单调性来满足调节要求。单调神经加性模型利用神经加性模型特有的结构特征,对单调性违规行为进行了有效的惩罚。因此,训练单调神经加性模型的计算成本与训练神经加性模型的计算成本类似,就像一顿免费的午餐。我们通过实证结果证明,我们的新模型与黑盒全连接神经网络一样准确,提供了一种高度精确和规范的机器学习方法。
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