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Learning to Persuade on the Fly: Robustness Against Ignorance

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  • You Zu
  • Krishnamurthy Iyer
  • Haifeng Xu

Abstract

Motivated by information sharing in online platforms, we study repeated persuasion between a sender and a stream of receivers where at each time, the sender observes a payoff-relevant state drawn independently and identically from an unknown distribution, and shares state information with the receivers who each choose an action. The sender seeks to persuade the receivers into taking actions aligned with the sender's preference by selectively sharing state information. However, in contrast to the standard models, neither the sender nor the receivers know the distribution, and the sender has to persuade while learning the distribution on the fly. We study the sender's learning problem of making persuasive action recommendations to achieve low regret against the optimal persuasion mechanism with the knowledge of the distribution. To do this, we first propose and motivate a persuasiveness criterion for the unknown distribution setting that centers robustness as a requirement in the face of uncertainty. Our main result is an algorithm that, with high probability, is robustly-persuasive and achieves $O(\sqrt{T\log T})$ regret, where $T$ is the horizon length. Intuitively, at each time our algorithm maintains a set of candidate distributions, and chooses a signaling mechanism that is simultaneously persuasive for all of them. Core to our proof is a tight analysis about the cost of robust persuasion, which may be of independent interest. We further prove that this regret order is optimal (up to logarithmic terms) by showing that no algorithm can achieve regret better than $\Omega(\sqrt{T})$.

Suggested Citation

  • You Zu & Krishnamurthy Iyer & Haifeng Xu, 2021. "Learning to Persuade on the Fly: Robustness Against Ignorance," Papers 2102.10156, arXiv.org, revised May 2024.
  • Handle: RePEc:arx:papers:2102.10156
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    References listed on IDEAS

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    Cited by:

    1. Yiling Chen & Tao Lin, 2023. "Persuading a Behavioral Agent: Approximately Best Responding and Learning," Papers 2302.03719, arXiv.org, revised Feb 2024.

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