计算无歧视保险价格的多任务网络方法

IF 0.8 Q4 BUSINESS, FINANCE
Mathias Lindholm, Ronald Richman, Andreas Tsanakas, Mario V. Wüthrich
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引用次数: 0

摘要

在预测建模的应用中,如保险定价,间接或代理歧视是一个主要关注的问题。也就是说,预测模型可能隐含地从未受保护的投保人身上推断出受保护的投保人特征,从而对价格产生不希望看到的(甚至可能是非法的)影响。这个问题的技术解决方案依赖于使用所有投保人特征(包括受保护的投保人)构建一个最佳估计模型,然后计算个人价格的受保护特征的平均值。然而,这种方法需要充分了解投保人的受保护特征,这本身就可能存在问题。在这里,我们通过使用用于索赔预测的多任务神经网络架构来解决这个问题,该架构可以仅使用受保护特征的部分信息进行训练,并产生不受代理歧视的价格。我们在合成数据和现实世界的电机索赔数据集上展示了所提出的方法,其中可以观察到代理歧视。在这两个例子中,我们发现,当受保护的信息至少对一半的保单可用时,多任务网络的预测精度与传统的前馈神经网络相当。然而,当被保护的信息为少于一半的投保人所知时,多任务网络具有更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A multi-task network approach for calculating discrimination-free insurance prices

A multi-task network approach for calculating discrimination-free insurance prices
Abstract In applications of predictive modeling, such as insurance pricing, indirect or proxy discrimination is an issue of major concern. Namely, there exists the possibility that protected policyholder characteristics are implicitly inferred from non-protected ones by predictive models and are thus having an undesirable (and possibly illegal) impact on prices. A technical solution to this problem relies on building a best-estimate model using all policyholder characteristics (including protected ones) and then averaging out the protected characteristics for calculating individual prices. However, such an approach requires full knowledge of policyholders’ protected characteristics, which may in itself be problematic. Here, we address this issue by using a multi-task neural network architecture for claim predictions, which can be trained using only partial information on protected characteristics and produces prices that are free from proxy discrimination. We demonstrate the proposed method on both synthetic data and a real-world motor claims dataset, in which proxy discrimination can be observed. In both examples we find that the predictive accuracy of the multi-task network is comparable to a conventional feed-forward neural network, when the protected information is available for at least half of the insurance policies. However, the multi-task network has superior performance in the case when the protected information is known for less than half of the insurance policyholders.
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来源期刊
European Actuarial Journal
European Actuarial Journal BUSINESS, FINANCE-
CiteScore
2.30
自引率
8.30%
发文量
35
期刊介绍: Actuarial science and actuarial finance deal with the study, modeling and managing of insurance and related financial risks for which stochastic models and statistical methods are available. Topics include classical actuarial mathematics such as life and non-life insurance, pension funds, reinsurance, and also more recent areas of interest such as risk management, asset-and-liability management, solvency, catastrophe modeling, systematic changes in risk parameters, longevity, etc. EAJ is designed for the promotion and development of actuarial science and actuarial finance. For this, we publish original actuarial research papers, either theoretical or applied, with innovative applications, as well as case studies on the evaluation and implementation of new mathematical methods in insurance and actuarial finance. We also welcome survey papers on topics of recent interest in the field. EAJ is the successor of six national actuarial journals, and particularly focuses on links between actuarial theory and practice. In order to serve as a platform for this exchange, we also welcome discussions (typically from practitioners, with a length of 1-3 pages) on published papers that highlight the application aspects of the discussed paper. Such discussions can also suggest modifications of the studied problem which are of particular interest to actuarial practice. Thus, they can serve as motivation for further studies.Finally, EAJ now also publishes ‘Letters’, which are short papers (up to 5 pages) that have academic and/or practical relevance and consist of e.g. an interesting idea, insight, clarification or observation of a cross-connection that deserves publication, but is shorter than a usual research article. A detailed description or proposition of a new relevant research question, short but curious mathematical results that deserve the attention of the actuarial community as well as novel applications of mathematical and actuarial concepts are equally welcome. Letter submissions will be reviewed within 6 weeks, so that they provide an opportunity to get good and pertinent ideas published quickly, while the same refereeing standards as for other submissions apply. Both academics and practitioners are encouraged to contribute to this new format. Authors are invited to submit their papers online via http://euaj.edmgr.com.
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