首页> 外文会议>IEEE Annual Symposium on Foundations of Computer Science >An O(log log m) Prophet Inequality for Subadditive Combinatorial Auctions
【24h】

An O(log log m) Prophet Inequality for Subadditive Combinatorial Auctions

机译:o(log log m)子放弃组合拍卖的先知不等式

获取原文

摘要

Prophet inequalities compare the expected performance of an online algorithm for a stochastic optimization problem to the expected optimal solution in hindsight. They are a major alternative to classic worst-case competitive analysis, of particular importance in the design and analysis of simple (posted-price) incentive compatible mechanisms with provable approximation guarantees. A central open problem in this area concerns subadditive combinatorial auctions. Here n agents with subadditive valuation functions compete for the assignment of m items. The goal is to find an allocation of the items that maximizes the total value of the assignment. The question is whether there exists a prophet inequality for this problem that significantly beats the best known approximation factor of O(log m). We make major progress on this question by providing an O(log log m) prophet inequality. Our proof goes through a novel primal-dual approach. It is also constructive, resulting in an online policy that takes the form of static and anonymous item prices that can be computed in polynomial time given appropriate query access to the valuations. As an application of our approach, we construct a simple and incentive compatible mechanism based on posted prices that achieves an O(log log m) approximation to the optimal revenue for subadditive valuations under an item-independence assumption.
机译:先知不等式比较在线算法对后勤预期最佳解决方案的在线算法的预期绩效。它们是经典最坏情况竞争分析的主要替代方案,特别重要的简单(发布价格)激励兼容机制的设计和分析,具有可提供的近似保证。该领域的一个中央公开问题涉及源组合拍卖。这里有次级评估函数的N代理竞争分配M项。目标是找到最大化分配总值的项目的分配。问题是是否存在先知不等式对于此问题,显着击败了O(log m)的最佳已知的近似因子。通过提供O(日志LOG M)先知不等式,我们在此问题进行了重大进展。我们的证据通过了一种新颖的原始方法。它也是建设性的,导致在线策略采用静态和匿名项目价格的形式,可以在多项式时间中计算适当的查询对估值的访问。作为我们的方法的应用,我们基于发布的价格构建一个简单且激励的兼容机制,以便在项目独立假设下实现O(log log m)近似到次级估值的最佳收入。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号