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Autores principales: Collina, Natalie, Goel, Surbhi, Roth, Aaron, Shi, Mirah
Formato: Preprint
Publicado: 2026
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Acceso en línea:https://arxiv.org/abs/2602.13451
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author Collina, Natalie
Goel, Surbhi
Roth, Aaron
Shi, Mirah
author_facet Collina, Natalie
Goel, Surbhi
Roth, Aaron
Shi, Mirah
contents Can competition among misaligned AI providers yield aligned outcomes for a diverse population of users, and what role does model personalization play? We study a setting where multiple competing AI providers interact with multiple users who must make downstream decisions but differ in preferences. Providers have their own objectives over users' actions and strategically deploy AI models to advance them. We model the interaction as a Stackelberg game with multiple leaders (providers) and followers (users): providers commit to conversational policies, and users choose which model to use, how to converse, and how to act. With user-specific personalization, we show that under a Weak Market Alignment condition, every equilibrium gives each user outcomes comparable to those from a perfectly aligned common model -- so personalization can induce pluralistically aligned outcomes, even when providers are self-interested. In contrast, when providers must deploy a single anonymous policy, there exist equilibria with uninformative behavior under the same condition. We then give a stronger alignment condition that guarantees each user their optimal utility in the anonymous setting.
format Preprint
id arxiv_https___arxiv_org_abs_2602_13451
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Personalization Aids Pluralistic Alignment Under Competition
Collina, Natalie
Goel, Surbhi
Roth, Aaron
Shi, Mirah
Computer Science and Game Theory
Can competition among misaligned AI providers yield aligned outcomes for a diverse population of users, and what role does model personalization play? We study a setting where multiple competing AI providers interact with multiple users who must make downstream decisions but differ in preferences. Providers have their own objectives over users' actions and strategically deploy AI models to advance them. We model the interaction as a Stackelberg game with multiple leaders (providers) and followers (users): providers commit to conversational policies, and users choose which model to use, how to converse, and how to act. With user-specific personalization, we show that under a Weak Market Alignment condition, every equilibrium gives each user outcomes comparable to those from a perfectly aligned common model -- so personalization can induce pluralistically aligned outcomes, even when providers are self-interested. In contrast, when providers must deploy a single anonymous policy, there exist equilibria with uninformative behavior under the same condition. We then give a stronger alignment condition that guarantees each user their optimal utility in the anonymous setting.
title Personalization Aids Pluralistic Alignment Under Competition
topic Computer Science and Game Theory
url https://arxiv.org/abs/2602.13451