Publication | Closed Access
Optimal auctions with positive network externalities
52
Citations
19
References
2011
Year
Unknown Venue
Mathematical ProgrammingKnown Submodular FunctionElectronic AuctionEngineeringComputational Social ChoiceDesign AuctionsGame TheoryOptimal AuctionMarket Equilibrium ComputationMarket DesignExperimental EconomicsAlgorithmic Mechanism DesignAuction TheoryCombinatorial OptimizationMechanism DesignEconomicsComputer ScienceProbability TheoryBusinessAlgorithmic Game TheoryOptimal Auctions
We consider the problem of designing auctions in social networks for goods that exhibit single-parameter submodular network externalities in which a bidder's value for an outcome is a fixed private type times a known submodular function of the allocation of his friends. Externalities pose many issues that are hard to address with traditional techniques; our work shows how to resolve these issues in a specific setting of particular interest. We operate in a Bayesian environment and so assume private values are drawn according to known distributions. We prove that the optimal auction is APX-hard. Thus we instead design auctions whose revenue approximates that of the optimal auction. Our main result considers step-function externalities in which a bidder's value for an outcome is either zero, or equal to his private type if at least one friend has the good. For these settings, we provide a e/e+1-approximation. We also give a $0.25$-approximation auction for general single-parameter submodular network externalities, and discuss optimizing over a class of simple pricing strategies.
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