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arxiv: 1003.5328 · v1 · submitted 2010-03-27 · 💻 cs.GT

On the Interplay between Incentive Compatibility and Envy Freeness

classification 💻 cs.GT
keywords incentivecompatiblemechanismsallocationscharacterizationenvyenvy-freepayments
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We study mechanisms for an allocation of goods among agents, where agents have no incentive to lie about their true values (incentive compatible) and for which no agent will seek to exchange outcomes with another (envy-free). Mechanisms satisfying each requirement separately have been studied extensively, but there are few results on mechanisms achieving both. We are interested in those allocations for which there exist payments such that the resulting mechanism is simultaneously incentive compatible and envy-free. Cyclic monotonicity is a characterization of incentive compatible allocations, local efficiency is a characterization for envy-free allocations. We combine the above to give a characterization for allocations which are both incentive compatible and envy free. We show that even for allocations that allow payments leading to incentive compatible mechanisms, and other payments leading to envy free mechanisms, there may not exist any payments for which the mechanism is simultaneously incentive compatible and envy-free. The characterization that we give lets us compute the set of Pareto-optimal mechanisms that trade off envy freeness for incentive compatibility.

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  1. Envy, Regret, and Social Welfare Loss

    cs.GT 2019-07 unverdicted novelty 6.0

    Introduces IC-Envy metric for auction incentive compatibility that satisfies IC-Envy ≥ IC-Regret in position auctions and ad types, bounds social welfare loss from misreports, and improves ML prediction of regret over...