Payment rules through discriminant-based classifiers
Author(s) -
Paul Dütting,
Felix Fischer,
Pichayut Jirapinyo,
John K. Lai,
Benjamin Lubin,
David C. Parkes
Publication year - 2012
Publication title -
digital access to scholarship at harvard (dash) (harvard university)
Language(s) - English
Resource type - Conference proceedings
DOI - 10.1145/2229012.2229048
Subject(s) - incentive compatibility , computer science , regret , outcome (game theory) , payment , incentive , mathematical optimization , artificial intelligence , rationality , mechanism design , machine learning , greedy algorithm , mathematical economics , algorithm , mathematics , economics , microeconomics , world wide web , political science , law
In mechanism design it is typical to impose incentive compatibility and then derive an optimal mechanism subject to this constraint. By replacing the incentive compatibility requirement with the goal of minimizing expected ex post regret, we are able to adapt statistical machine learning techniques to the design of payment rules. This computational approach to mechanism design is applicable to domains with multi-dimensional types and situations where computational efficiency is a concern. Specifically, given an outcome rule and access to a type distribution, we train a support vector machine with a special discriminant function structure such that it implicitly establishes a payment rule with desirable incentive properties. We discuss applications to a multi-minded combinatorial auction with a greedy winner-determination algorithm and to an assignment problem with egalitarian outcome rule. Experimental results demonstrate both that the construction produces payment rules with low ex post regret, and that penalizing classification errors is effective in preventing failures of ex post individual rationality
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