Strategic Successive Refinement Coding for Bayesian Persuasion with Two Decoders

Authors

Image provided by Rony Bou Rouphael
Rony
Bou Rouphael
ETIS UMR 8051, CY Cergy Paris University, CNRS
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Mael
Le Treust
ETIS UMR 8051, Université Cergy-Pontoise, ENSEA, CNRS

Abstract

We study the multi-user Bayesian persuasion game between one encoder and two decoders, where the first decoder is better informed than the second decoder. We consider two perfect links, one to the first decoder only, and the other to both decoders. We consider that the encoder and both decoders are endowed with distinct and arbitrary distortion functions. We investigate the strategic source coding problem in which the encoder commits to an encoding while the decoders select the sequences of symbols that minimize their long-run respective distortion functions. We characterize the optimal encoder distortion value by considering successive refinement coding with respect to a specific probability distribution which involves two auxiliary random variables, and captures the incentive constraints of both decoders.

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