非单调子模目标的预算可行机制设计:离线和在线

Georgios Amanatidis, P. Kleer, G. Schäfer
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引用次数: 16

摘要

预算可行机制设计的框架研究采购拍卖,其中拍卖人(买方)的目标是在硬预算约束下最大化其估价功能。我们研究了设计具有良好近似保证的真实机制的问题,并且永远不会向参与的代理(卖方)支付超过预算的费用。我们专注于一般(非单调)子模估值函数的情况,并推导出第一个真实的、预算可行的和$O(1)$逼近机制,这些机制在价值查询模型中以多项式时间运行,适用于离线和在线拍卖。自从Singer \citepSinger10引入这个问题以来,获得超越单调子模函数类的目标的有效机制一直是难以捉摸的。在我们的工作之前,已知的唯一用于非单调子模目标的$O(1)$逼近机制需要指数数量的值查询。该方法的核心是一种新颖的贪心算法,用于在背包约束下实现非单调次模最大化。我们的算法同时构建两个候选解决方案(以获得良好的近似值),但确保代理不能从一个解决方案跳到另一个解决方案(以隐式地强制真实性)。我们的机制是解决这个问题的第一个机制,关键是,在这个问题中,代理不是根据它们的每成本边际价值排序的。这也让我们能够将这些理念适当地应用于网络环境中。为了进一步说明我们方法的适用性,我们还考虑了存在额外可行性约束的情况,例如,最多可以选择k个代理。当可行解是p系统的独立集时,我们得到了单调和非单调子模目标的O(p)逼近机制。除了附加的估值函数,在我们的工作之前,没有机制是已知的。最后,我们提供的下界表明,当人们关心多项式时间内的非平凡近似保证时,我们的结果是渐近最佳可能的。
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Budget-Feasible Mechanism Design for Non-Monotone Submodular Objectives: Offline and Online
The framework of budget-feasible mechanism design studies procurement auctions where the auctioneer (buyer) aims to maximize his valuation function subject to a hard budget constraint. We study the problem of designing truthful mechanisms that have good approximation guarantees and never pay the participating agents (sellers) more than the budget. We focus on the case of general (non-monotone) submodular valuation functions and derive the first truthful, budget-feasible and $O(1)$-approximation mechanisms that run in polynomial time in the value query model, for both offline and online auctions. Since the introduction of the problem by Singer \citepSinger10, obtaining efficient mechanisms for objectives that go beyond the class of monotone submodular functions has been elusive. Prior to our work, the only $O(1)$-approximation mechanism known for non-monotone submodular objectives required an exponential number of value queries. At the heart of our approach lies a novel greedy algorithm for non-monotone submodular maximization under a knapsack constraint. Our algorithm builds two candidate solutions simultaneously (to achieve a good approximation), yet ensures that agents cannot jump from one solution to the other (to implicitly enforce truthfulness). Ours is the first mechanism for the problem where---crucially---the agents are not ordered according to their marginal value per cost. This allows us to appropriately adapt these ideas to the online setting as well. To further illustrate the applicability of our approach, we also consider the case where additional feasibility constraints are present, e.g., at most k agents can be selected. We obtain O(p)-approximation mechanisms for both monotone and non-monotone submodular objectives, when the feasible solutions are independent sets of a p-system. With the exception of additive valuation functions, no mechanisms were known for this setting prior to our work. Finally, we provide lower bounds suggesting that, when one cares about non-trivial approximation guarantees in polynomial time, our results are asymptotically best possible.
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