Multi-Sender Persuasion: A Computational Perspective
We consider the multi-sender persuasion problem: multiple players with informational advantage signal to convince a single self-interested actor to take certain actions. This problem generalizes the seminal Bayesian Persuasion framework and is ubiquitous in computational economics, multi-agent learn...
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Format | Journal Article |
Language | English |
Published |
07.02.2024
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Abstract | We consider the multi-sender persuasion problem: multiple players with
informational advantage signal to convince a single self-interested actor to
take certain actions. This problem generalizes the seminal Bayesian Persuasion
framework and is ubiquitous in computational economics, multi-agent learning,
and multi-objective machine learning. The core solution concept here is the
Nash equilibrium of senders' signaling policies. Theoretically, we prove that
finding an equilibrium in general is PPAD-Hard; in fact, even computing a
sender's best response is NP-Hard. Given these intrinsic difficulties, we turn
to finding local Nash equilibria. We propose a novel differentiable neural
network to approximate this game's non-linear and discontinuous utilities.
Complementing this with the extra-gradient algorithm, we discover local
equilibria that Pareto dominates full-revelation equilibria and those found by
existing neural networks. Broadly, our theoretical and empirical contributions
are of interest to a large class of economic problems. |
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AbstractList | We consider the multi-sender persuasion problem: multiple players with
informational advantage signal to convince a single self-interested actor to
take certain actions. This problem generalizes the seminal Bayesian Persuasion
framework and is ubiquitous in computational economics, multi-agent learning,
and multi-objective machine learning. The core solution concept here is the
Nash equilibrium of senders' signaling policies. Theoretically, we prove that
finding an equilibrium in general is PPAD-Hard; in fact, even computing a
sender's best response is NP-Hard. Given these intrinsic difficulties, we turn
to finding local Nash equilibria. We propose a novel differentiable neural
network to approximate this game's non-linear and discontinuous utilities.
Complementing this with the extra-gradient algorithm, we discover local
equilibria that Pareto dominates full-revelation equilibria and those found by
existing neural networks. Broadly, our theoretical and empirical contributions
are of interest to a large class of economic problems. |
Author | Parkes, David C Xu, Haifeng Hossain, Safwan Chen, Yiling Lin, Tao Wang, Tonghan |
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BackLink | https://doi.org/10.48550/arXiv.2402.04971$$DView paper in arXiv |
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Snippet | We consider the multi-sender persuasion problem: multiple players with
informational advantage signal to convince a single self-interested actor to
take... |
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SubjectTerms | Computer Science - Artificial Intelligence Computer Science - Computer Science and Game Theory |
Title | Multi-Sender Persuasion: A Computational Perspective |
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