保险行业的算法决策与模型可解释性偏好:德尔菲研究

Eric Schotman, Deniz Iren
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引用次数: 0

摘要

人们越来越关注算法决策系统的透明度、公平性和可解释性,因为它们渗透到我们生活的许多方面。尽管人们意识到GDPR提供的算法透明度和有意义的解释权的必要性,但人们对这些解释有意义和有用的原因知之甚少。在某些情况下,高透明度可能与组织的最佳利益相冲突,这个问题变得特别具有挑战性。保险行业提出了一个有趣的案例,因为保险提供商的商业模式取决于对客户群体的歧视。在本文中,我们提出了一个德尔菲研究的结果与专家从荷兰保险业告知初步调查。我们的研究结果包括从保险公司的角度对五种常用算法决策系统的客户的首选解释元素。它们还表明,没有一种放之四海而皆准的解释方法,它取决于系统本身和使用它的环境。最后,研究结果强调了保险专家对以解释形式披露敏感信息的风险和担忧。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Algorithmic Decision Making and Model Explainability Preferences in the Insurance Industry: A Delphi Study
There is growing attention to the transparency, fairness, and explainability of algorithmic decision-making systems as they permeate many aspects of our lives. Despite the awareness of the need for algorithmic transparency and the right-to-meaningful-explanation provided by GDPR, little is known regarding what makes such explanations meaningful and useful. This issue becomes especially challenging in certain situations in which high levels of transparency may conflict with the best interest of organizations. The insurance industry poses an interesting case as the business model of insurance providers depends on the discrimination of customer groups. In this paper, we present the results of a Delphi study with experts from the Dutch insurance industry informed by an initial survey. Our results include the preferred explanation elements towards customers, from the perspective of the insurer, for five commonly used algorithmic decision-making systems. They also show that there is not a one-size-fits-all explanation approach, and that it depends on the system itself and the context in which it is used. Finally, the results highlight risks and concerns of the insurance experts regarding the disclosure of sensitive information in the form of explanations.
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