57 research outputs found

    Strategy-Proof Facility Location for Concave Cost Functions

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    We consider k-Facility Location games, where n strategic agents report their locations on the real line, and a mechanism maps them to k facilities. Each agent seeks to minimize his connection cost, given by a nonnegative increasing function of his distance to the nearest facility. Departing from previous work, that mostly considers the identity cost function, we are interested in mechanisms without payments that are (group) strategyproof for any given cost function, and achieve a good approximation ratio for the social cost and/or the maximum cost of the agents. We present a randomized mechanism, called Equal Cost, which is group strategyproof and achieves a bounded approximation ratio for all k and n, for any given concave cost function. The approximation ratio is at most 2 for Max Cost and at most n for Social Cost. To the best of our knowledge, this is the first mechanism with a bounded approximation ratio for instances with k > 2 facilities and any number of agents. Our result implies an interesting separation between deterministic mechanisms, whose approximation ratio for Max Cost jumps from 2 to unbounded when k increases from 2 to 3, and randomized mechanisms, whose approximation ratio remains at most 2 for all k. On the negative side, we exclude the possibility of a mechanism with the properties of Equal Cost for strictly convex cost functions. We also present a randomized mechanism, called Pick the Loser, which applies to instances with k facilities and n = k+1 agents, and for any given concave cost function, is strongly group strategyproof and achieves an approximation ratio of 2 for Social Cost

    The Value of Knowing Your Enemy

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    Many auction settings implicitly or explicitly require that bidders are treated equally ex-ante. This may be because discrimination is philosophically or legally impermissible, or because it is practically difficult to implement or impossible to enforce. We study so-called {\em anonymous} auctions to understand the revenue tradeoffs and to develop simple anonymous auctions that are approximately optimal. We consider digital goods settings and show that the optimal anonymous, dominant strategy incentive compatible auction has an intuitive structure --- imagine that bidders are randomly permuted before the auction, then infer a posterior belief about bidder i's valuation from the values of other bidders and set a posted price that maximizes revenue given this posterior. We prove that no anonymous mechanism can guarantee an approximation better than O(n) to the optimal revenue in the worst case (or O(log n) for regular distributions) and that even posted price mechanisms match those guarantees. Understanding that the real power of anonymous mechanisms comes when the auctioneer can infer the bidder identities accurately, we show a tight O(k) approximation guarantee when each bidder can be confused with at most k "higher types". Moreover, we introduce a simple mechanism based on n target prices that is asymptotically optimal and build on this mechanism to extend our results to m-unit auctions and sponsored search

    Strong Duality for a Multiple-Good Monopolist

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    We characterize optimal mechanisms for the multiple-good monopoly problem and provide a framework to find them. We show that a mechanism is optimal if and only if a measure μ\mu derived from the buyer's type distribution satisfies certain stochastic dominance conditions. This measure expresses the marginal change in the seller's revenue under marginal changes in the rent paid to subsets of buyer types. As a corollary, we characterize the optimality of grand-bundling mechanisms, strengthening several results in the literature, where only sufficient optimality conditions have been derived. As an application, we show that the optimal mechanism for nn independent uniform items each supported on [c,c+1][c,c+1] is a grand-bundling mechanism, as long as cc is sufficiently large, extending Pavlov's result for 22 items [Pavlov'11]. At the same time, our characterization also implies that, for all cc and for all sufficiently large nn, the optimal mechanism for nn independent uniform items supported on [c,c+1][c,c+1] is not a grand bundling mechanism

    On the Structure, Covering, and Learning of Poisson Multinomial Distributions

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    An (n,k)(n,k)-Poisson Multinomial Distribution (PMD) is the distribution of the sum of nn independent random vectors supported on the set Bk={e1,,ek}{\cal B}_k=\{e_1,\ldots,e_k\} of standard basis vectors in Rk\mathbb{R}^k. We prove a structural characterization of these distributions, showing that, for all ε>0\varepsilon >0, any (n,k)(n, k)-Poisson multinomial random vector is ε\varepsilon-close, in total variation distance, to the sum of a discretized multidimensional Gaussian and an independent (poly(k/ε),k)(\text{poly}(k/\varepsilon), k)-Poisson multinomial random vector. Our structural characterization extends the multi-dimensional CLT of Valiant and Valiant, by simultaneously applying to all approximation requirements ε\varepsilon. In particular, it overcomes factors depending on logn\log n and, importantly, the minimum eigenvalue of the PMD's covariance matrix from the distance to a multidimensional Gaussian random variable. We use our structural characterization to obtain an ε\varepsilon-cover, in total variation distance, of the set of all (n,k)(n, k)-PMDs, significantly improving the cover size of Daskalakis and Papadimitriou, and obtaining the same qualitative dependence of the cover size on nn and ε\varepsilon as the k=2k=2 cover of Daskalakis and Papadimitriou. We further exploit this structure to show that (n,k)(n,k)-PMDs can be learned to within ε\varepsilon in total variation distance from O~k(1/ε2)\tilde{O}_k(1/\varepsilon^2) samples, which is near-optimal in terms of dependence on ε\varepsilon and independent of nn. In particular, our result generalizes the single-dimensional result of Daskalakis, Diakonikolas, and Servedio for Poisson Binomials to arbitrary dimension.Comment: 49 pages, extended abstract appeared in FOCS 201
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