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退保的机器学习:最优性与人性

Machine learning of surrender: Optimality and humanity

Journal of Risk & Insurance · 2023
被引 8
人大 BABS 3

中文导读

用机器学习同时考虑理性最优退保和因财务困境或绝症的非理性退保,帮助保险公司和养老基金设定退保费用并进行压力测试,平衡利润与社会责任。

Abstract

Abstract We develop a novel machine learning (ML) framework to estimate a surrender charge for variable annuities (VAs) with the balance between human behavior and rational optimality. Optimality accounts for insurers' potential losses from strategic surrenders by policyholders who attempt to take advantage of the market situation. However, policyholders sometimes need to surrender a VA because of sudden personal financial distress or a terminal illness. The literature contains contributions for these two surrender decisions separately, but we consider them simultaneously using ML. The ML framework is a Bayesian mixture of a deep optimal stopping rule based on potentially high‐dimensional financial variables and a statistical model with historical data. This framework can help insurers and pension funds to set surrender charges and perform stress testing in ways that balance profits and social responsibility by incorporating policyholders' behavioral data.

保险精算机器学习养老金金融经济学行为经济学