Archive | 2019

Convergence of Learning Dynamics in Information Retrieval Games

 
 
 

Abstract


We consider a game-theoretic model of information retrieval with strategic authors. We examine two different utility schemes: authors who aim at maximizing exposure and authors who want to maximize active selection of their content (i.e. the number of clicks). We introduce the study of author learning dynamics in such contexts. We prove that under the probability ranking principle (PRP), which forms the basis of the current state of the art ranking methods, any better-response learning dynamics converges to a pure Nash equilibrium. We also show that other ranking methods induce a strategic environment under which such a convergence may not occur.

Volume None
Pages 1780-1787
DOI 10.1609/aaai.v33i01.33011780
Language English
Journal None

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