Predicting mortality from credit reports

Giacomo De Giorgi, Matthew Harding, Gabriel F. R. Vasconcelos
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引用次数: 2

Abstract

Data on hundreds of variables related to individual consumer finance behavior (such as credit card and loan activity) is routinely collected in many countries and plays an important role in lending decisions. We postulate that the detailed nature of this data may be used to predict outcomes in seemingly unrelated domains such as individual health. We build a series of machine learning models to demonstrate that credit report data can be used to predict individual mortality. Variable groups related to credit cards and various loans, mostly unsecured loans, are shown to carry significant predictive power. Lags of these variables are also significant thus indicating that dynamics also matters. Improved mortality predictions based on consumer finance data can have important economic implications in insurance markets but may also raise privacy concerns.

根据信用报告预测死亡率
在许多国家,与个人消费金融行为(如信用卡和贷款活动)相关的数百个变量的数据是常规收集的,在贷款决策中起着重要作用。我们假设,这些数据的详细性质可以用来预测结果在看似不相关的领域,如个人健康。我们建立了一系列机器学习模型来证明信用报告数据可以用来预测个人死亡率。与信用卡和各种贷款(主要是无担保贷款)相关的变量组显示出显著的预测能力。这些变量的滞后也很显著,因此表明动态也很重要。基于消费者金融数据的死亡率预测的改进可能对保险市场产生重要的经济影响,但也可能引起隐私问题。
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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