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Wisdom of the Crowd Voting: Truthful Aggregation of Voter Information and Preferences

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 Added by Biaoshuai Tao
 Publication date 2021
and research's language is English




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We consider two-alternative elections where voters preferences depend on a state variable that is not directly observable. Each voter receives a private signal that is correlated to the state variable. Voters may be contingent with different preferences in different states; or predetermined with the same preference in every state. In this setting, even if every voter is a contingent voter, agents voting according to their private information need not result in the adoption of the universally preferred alternative, because the signals can be systematically biased. We present an easy-to-deploy mechanism that elicits and aggregates the private signals from the voters, and outputs the alternative that is favored by the majority. In particular, voters truthfully reporting their signals forms a strong Bayes Nash equilibrium (where no coalition of voters can deviate and receive a better outcome).



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