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Reputational Algorithm Aversion

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  • Gregory Weitzner

Abstract

People are often reluctant to incorporate information produced by algorithms into their decisions, a phenomenon called "algorithm aversion". This paper shows how algorithm aversion arises when the choice to follow an algorithm conveys information about a human's ability. I develop a model in which workers make forecasts of a random outcome based on their own private information and an algorithm's signal. Low-skill workers receive worse information than the algorithm and hence should always follow the algorithm's signal, while high-skill workers receive better information than the algorithm and should sometimes override it. However, due to reputational concerns, low-skill workers inefficiently override the algorithm to increase the likelihood they are perceived as high-skill. The model provides a fully rational microfoundation for algorithm aversion that aligns with the broad concern that AI systems will displace many types of workers.

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  • Gregory Weitzner, 2024. "Reputational Algorithm Aversion," Papers 2402.15418, arXiv.org.
  • Handle: RePEc:arx:papers:2402.15418
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    References listed on IDEAS

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