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Hauptverfasser: Salinas-Rodriguez, Cayetana, Rogers, Jonathan, Li, Sarah H. Q.
Format: Preprint
Veröffentlicht: 2025
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Online-Zugang:https://arxiv.org/abs/2511.07363
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author Salinas-Rodriguez, Cayetana
Rogers, Jonathan
Li, Sarah H. Q.
author_facet Salinas-Rodriguez, Cayetana
Rogers, Jonathan
Li, Sarah H. Q.
contents We study a two-player dynamic Stackelberg game where the follower's intention is unknown to the leader. Classical formulations of the Stackelberg equilibrium (SE) assume that the follower's best response (BR) function is known to the leader. However, this is not always true in practice. We study a setting in which the leader receives updated beliefs about the follower BR before the end of the game, such that the update prompts the leader and subsequently the follower to re-optimize their strategies. We characterize the optimality guarantees of the SE solutions under this belief update for both open loop and feedback information structures. Interestingly, we prove that in general, assuming an incorrect follower's BR may lead to a lower leader cost over the entire game than knowing the true follower's BR. We support these results with numerical examples in a linear quadratic (LQ) Stackelberg game, and use Monte Carlo simulations to show that the instances of incorrect BR achieving lower leader costs are non-trivial in collision avoidance LQ Stackelberg games.
format Preprint
id arxiv_https___arxiv_org_abs_2511_07363
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle When the Correct Model Fails: The Optimality of Stackelberg Equilibria with Follower Intention Updates
Salinas-Rodriguez, Cayetana
Rogers, Jonathan
Li, Sarah H. Q.
Systems and Control
Computer Science and Game Theory
We study a two-player dynamic Stackelberg game where the follower's intention is unknown to the leader. Classical formulations of the Stackelberg equilibrium (SE) assume that the follower's best response (BR) function is known to the leader. However, this is not always true in practice. We study a setting in which the leader receives updated beliefs about the follower BR before the end of the game, such that the update prompts the leader and subsequently the follower to re-optimize their strategies. We characterize the optimality guarantees of the SE solutions under this belief update for both open loop and feedback information structures. Interestingly, we prove that in general, assuming an incorrect follower's BR may lead to a lower leader cost over the entire game than knowing the true follower's BR. We support these results with numerical examples in a linear quadratic (LQ) Stackelberg game, and use Monte Carlo simulations to show that the instances of incorrect BR achieving lower leader costs are non-trivial in collision avoidance LQ Stackelberg games.
title When the Correct Model Fails: The Optimality of Stackelberg Equilibria with Follower Intention Updates
topic Systems and Control
Computer Science and Game Theory
url https://arxiv.org/abs/2511.07363