7 research outputs found

    Regret Minimizing Equilibria of Games with Strict Type Uncertainty

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    In the standard mechanism design setting, the type (e.g., utility function) of an agent is not known by other agents, nor is it known by the mechanism designer. When this uncertainty is quantified probabilistically, a mechanism induces a game of incomplete information among the agents. However, in many settings, uncertainty over utility functions cannot easily be quantified. We consider the problem of incomplete information games in which type uncertainty is strict or unquantified. We propose the use of minimax regret as a decision criterion in such games, a robust approach for dealing with type uncertainty. We define minimax-regret equilibria and prove that these exist in mixed strategies for finite games. We also briefly discuss mechanism design in this framework, with minimax regret as an optimization criterion for the designer itself, and the automated optimization of such mechanisms

    Computer science and decision theory

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