使用形状约束的可解释机器学习模型剖析抵押贷款违约

Geng Deng, Guangning Xu, Zebin Yang, Yongping Liang, Xindong Wang, Qiang Fu, Aijun Zhang, Agus Sudjianto
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引用次数: 0

摘要

本研究利用新颖的机器学习技术来量化抵押贷款违约及其驱动因素之间复杂的经验关系。采用的主要模型是作者新开发的形状约束的GAMI-Net,它引入了基于点阵函数的主效应和采用用户定义形状约束的两两交互。他们向格模块添加形状约束的方法增强了模型在现实场景中的可解释性和适用性。作者使用房地美公开的抵押贷款数据集,将形状受限的GAMI-Net与替代机器学习和传统统计方法的性能进行了比较。结果表明,形状约束的GAMI-Net模型具有较好的预测性能和较高的可解释性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Anatomy of Mortgage Default Using Shape-Constrained Explainable Machine Learning Model
This study leverages novel machine learning techniques to quantify the complex empirical relationship between mortgage default and its drivers. The primary model employed is the authors’ newly developed shape-constrained GAMI-Net, which introduces lattice function-based main effects and pairwise interactions that take user-defined shape constraints. Their approach of adding shape constraints to a lattice module enhances the interpretability and applicability of the model in real-world scenarios. The authors compare the performance of shape-constrained GAMI-Net with alternative machine learning and traditional statistical methods using Freddie Mac’s publicly available mortgage dataset. The results demonstrate competitive predictive performance and high interpretability for the shape-constrained GAMI-Net model.
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