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Cream Skimming: Innovations in Insurance Risk Classification and Adverse Selection

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  • David A. Cather

Abstract

We demonstrate how innovations in insurance risk classification can lead to adverse selection, or cream skimming, against insurers that are slow to adopt such pricing innovations. Using a model in which insurers with insufficient pricing data cannot differentiate between low‐ and high‐risk policyholders and therefore charge both the same premium, we show how innovative insurers develop new risk classification data to identify overcharged low‐risk policyholders and attract them from rival insurers with reduced prices. Less innovative insurers thus insure a growing percentage of high‐risk customers, resulting in adverse selection attributable to their informational disadvantage. Next, we examine two cases in which “Big Data” innovations in risk classification led to concerns about cream skimming among U.S. auto insurers. First, we track the rapid adoption of credit‐based insurance scores as pricing variables in personal auto insurance markets. Second, we examine the growing popularity of usage‐based insurance programs like telematics, plans in which insurers use data on policyholders’ actual driving behavior to set prices that attract low‐risk customers. Issues associated with the execution of such pricing strategies are discussed. In both cases, we document how rival insurers quickly adopt successful innovations to reduce their exposure to adverse selection.

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  • David A. Cather, 2018. "Cream Skimming: Innovations in Insurance Risk Classification and Adverse Selection," Risk Management and Insurance Review, American Risk and Insurance Association, vol. 21(2), pages 335-366, September.
  • Handle: RePEc:bla:rmgtin:v:21:y:2018:i:2:p:335-366
    DOI: 10.1111/rmir.12102
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    References listed on IDEAS

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    1. David A. Cather, 2020. "Reconsidering insurance discrimination and adverse selection in an era of data analytics," The Geneva Papers on Risk and Insurance - Issues and Practice, Palgrave Macmillan;The Geneva Association, vol. 45(3), pages 426-456, July.
    2. Jan Hájek, 2020. "Effect of tax deductibility on technical reserves recognized by Czech and Slovak insurance companies [Vliv daňové uznatelnosti na výši technických rezerv tvořených českými a slovenskými pojišťovnam," Český finanční a účetní časopis, Prague University of Economics and Business, vol. 2020(3-4).
    3. Jan Hájek, 2020. "Effect of tax deductibility on technical reserves recognized by Czech and Slovak insurance companies [Vliv daňové uznatelnosti na výši technických rezerv tvořených českými a slovenskými pojišťovnam," Český finanční a účetní časopis, Prague University of Economics and Business, vol. 2020(3-4), pages 25-37.
    4. Casper H. de Jong, 2021. "Risk classification and the balance of information in insurance; an alternative interpretation of the evidence," Risk Management and Insurance Review, American Risk and Insurance Association, vol. 24(4), pages 445-461, December.
    5. Martin Eling & Irina Gemmo & Danjela Guxha & Hato Schmeiser, 2024. "Big data, risk classification, and privacy in insurance markets," The Geneva Risk and Insurance Review, Palgrave Macmillan;International Association for the Study of Insurance Economics (The Geneva Association), vol. 49(1), pages 75-126, March.
    6. Carlo Pugnetti & Sandra Elmer, 2020. "Self-Assessment of Driving Style and the Willingness to Share Personal Information," JRFM, MDPI, vol. 13(3), pages 1-18, March.

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