A fair price to pay: Exploiting causal graphs for fairness in insurance

IF 2.1 3区 经济学 Q2 BUSINESS, FINANCE
Olivier Côté, Marie-Pier Côté, Arthur Charpentier
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引用次数: 0

Abstract

In many jurisdictions, insurance companies are prohibited from discriminating based on certain policyholder characteristics. Exclusion of prohibited variables from models prevents direct discrimination, but fails to address proxy discrimination, a phenomenon especially prevalent when powerful predictive algorithms are fed with an abundance of acceptable covariates. The lack of formal definition for key fairness concepts, in particular indirect discrimination, hinders effective fairness assessment. We review causal inference notions and introduce a causal graph tailored for fairness in insurance. Exploiting these, we discuss potential sources of bias, formally define direct and indirect discrimination, and study the theoretical properties of fairness methodologies. A novel categorization of fair methodologies into five families (best-estimate, unaware, aware, hyperaware, and corrective) is constructed based on their expected fairness properties. A comprehensive pedagogical example illustrates the implications of our findings: the interplay between our fair score families, group fairness criteria, and discrimination.

Abstract Image

公平的代价:利用因果关系图实现保险公平
在许多司法管辖区,保险公司被禁止基于某些投保人的特征进行歧视。从模型中排除禁止变量可以防止直接歧视,但无法解决代理歧视,当强大的预测算法被大量可接受的协变量所填充时,这种现象尤其普遍。缺乏对关键公平概念的正式定义,特别是间接歧视,阻碍了有效的公平评估。我们回顾了因果推理的概念,并介绍了一个为保险公平量身定制的因果图。利用这些,我们讨论了偏见的潜在来源,正式定义了直接和间接歧视,并研究了公平方法的理论性质。公平方法的新分类分为五类(最佳估计,不知道,意识,超意识和纠正)是基于其预期的公平性属性构建的。一个全面的教学例子说明了我们的发现的含义:我们的公平得分家庭,群体公平标准和歧视之间的相互作用。
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来源期刊
CiteScore
3.50
自引率
15.80%
发文量
43
期刊介绍: The Journal of Risk and Insurance (JRI) is the premier outlet for theoretical and empirical research on the topics of insurance economics and risk management. Research in the JRI informs practice, policy-making, and regulation in insurance markets as well as corporate and household risk management. JRI is the flagship journal for the American Risk and Insurance Association, and is currently indexed by the American Economic Association’s Economic Literature Index, RePEc, the Social Sciences Citation Index, and others. Issues of the Journal of Risk and Insurance, from volume one to volume 82 (2015), are available online through JSTOR . Recent issues of JRI are available through Wiley Online Library. In addition to the research areas of traditional strength for the JRI, the editorial team highlights below specific areas for special focus in the near term, due to their current relevance for the field.
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