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Autores principales: Hebbar, Vijeth, Langbort, Cédric
Formato: Preprint
Publicado: 2024
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Acceso en línea:https://arxiv.org/abs/2410.07457
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author Hebbar, Vijeth
Langbort, Cédric
author_facet Hebbar, Vijeth
Langbort, Cédric
contents We consider a repeated Stackelberg game setup where the leader faces a sequence of followers of unknown types and must learn what commitments to make. While previous works have considered followers that best respond to the commitment announced by the leader in every round, we relax this setup in two ways. Motivated by natural scenarios where the leader's reputation factors into how the followers choose their response, we consider followers with memory. Specifically, we model followers that base their response on not just the leader's current commitment but on an aggregate of their past commitments. In developing learning strategies that the leader can employ against such followers, we make the second relaxation and assume boundedly rational followers. In particular, we focus on followers employing quantal responses. Interestingly, we observe that the smoothness property offered by the quantal response (QR) model helps in addressing the challenge posed by learning against followers with memory. Utilizing techniques from online learning, we develop algorithms that guarantee $O(\sqrt{T})$ regret for quantal responding memory-less followers and $O(\sqrt{BT})$ regret for followers with bounded memory of length $B$ with both scaling polynomially in game parameters.
format Preprint
id arxiv_https___arxiv_org_abs_2410_07457
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Responding to Promises: No-regret learning against followers with memory
Hebbar, Vijeth
Langbort, Cédric
Computer Science and Game Theory
We consider a repeated Stackelberg game setup where the leader faces a sequence of followers of unknown types and must learn what commitments to make. While previous works have considered followers that best respond to the commitment announced by the leader in every round, we relax this setup in two ways. Motivated by natural scenarios where the leader's reputation factors into how the followers choose their response, we consider followers with memory. Specifically, we model followers that base their response on not just the leader's current commitment but on an aggregate of their past commitments. In developing learning strategies that the leader can employ against such followers, we make the second relaxation and assume boundedly rational followers. In particular, we focus on followers employing quantal responses. Interestingly, we observe that the smoothness property offered by the quantal response (QR) model helps in addressing the challenge posed by learning against followers with memory. Utilizing techniques from online learning, we develop algorithms that guarantee $O(\sqrt{T})$ regret for quantal responding memory-less followers and $O(\sqrt{BT})$ regret for followers with bounded memory of length $B$ with both scaling polynomially in game parameters.
title Responding to Promises: No-regret learning against followers with memory
topic Computer Science and Game Theory
url https://arxiv.org/abs/2410.07457