ArXiv TLDR

Optimal Insurance Menu Design under the Expected-Value Premium Principle

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2604.15881

Xia Han, Bin Li

q-fin.RMecon.TH

TLDR

This paper designs optimal insurance menus under asymmetric information, showing how to screen risk attitudes and types with specific pricing structures.

Key contributions

  • Designs optimal insurance menus under asymmetric information for both risk attitude and risk type.
  • Identifies excess-of-loss insurance with linear pricing as optimal for screening risk preferences.
  • Derives and proves existence/uniqueness of an ODE for optimal risk loading when risk type is unobserved.
  • Reveals nonlinear pricing with decreasing risk loadings, incentivizing higher-risk individuals to self-select.

Why it matters

This paper provides a novel framework for designing optimal insurance contracts when insurers face uncertainty about client risk attitudes and types. Its findings on nonlinear pricing and decreasing risk loadings for higher-risk individuals offer crucial insights for practical insurance market design. This can lead to more efficient and equitable insurance offerings.

Original Abstract

This paper studies optimal insurance design under asymmetric information in a Stackelberg framework, where a monopolistic insurer faces uncertainty about both the insured's risk attitude, captured by a risk-aversion parameter, and the insured's risk type, characterized by the loss distribution. In particular, when the risk type is unobservable, we allow the risk-aversion parameter to depend on the risk type. We construct a menu of contracts that maximizes the mean-variance utilities of both parties under the expected-value premium principle, subject to a truth-telling constraint that ensures the truthful revelation of private information. We show that when risk attitude is private information, the optimal coverage takes the form of excess-of-loss insurance with linear pricing in terms of the risk loading (defined as the premium minus the expected loss), designed to screen risk preferences. In contrast, when risk type is unobserved, we restrict the coverage function to an excess-of-loss form and derive an ordinary differential equation that characterizes the optimal risk loading. Under mild conditions, we establish the existence and uniqueness of the solution. The results show that equilibrium contracts exhibit nonlinear pricing with decreasing risk loadings, implying that higher-risk individuals face lower risk loadings in order to induce self-selection. Finally, numerical illustrations demonstrate how parameter values and the distributions of unobserved heterogeneity affect the structure of optimal contracts and the resulting pricing schedule.

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