首页> 外文会议>Annual European Symposium on Algorithms(ESA 2007); 20071008-10; Eilat(IL) >Online Primal-Dual Algorithms for Maximizing Ad-Auctions Revenue
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Online Primal-Dual Algorithms for Maximizing Ad-Auctions Revenue

机译:在线原始对偶算法可最大程度地增加广告拍卖收益

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We study the online ad-auctions problem introduced by Mehta et al. [15]. We design a (1-1/e)-competitive (optimal) algorithm for the problem, which is based on a clean primal-dual approach, matching the competitive factor obtained in [15]. Our basic algorithm along with its analysis are very simple. Our results are based on a unified approach developed earlier for the design of online algorithms [7,8]. In particular, the analysis uses weak duality rather than a tailor made (I.e., problem specific) potential function. We show that this approach is useful for analyzing other classical online algorithms such as ski rental and the TCP-acknowledgement problem. We are confident that the primal-dual method will prove useful in other online scenarios as well. The primal-dual approach enables us to extend our basic ad-auctions algorithm in a straight forward manner to scenarios in which additional information is available, yielding improved worst case competitive factors. In particular, a scenario in which additional stochastic information is available to the algorithm, a scenario in which the number of interested buyers in each product is bounded by some small number d, and a general risk management framework.
机译:我们研究了Mehta等人提出的在线拍卖问题。 [15]。我们针对该问题设计了一种(1-1 / e)竞争性(最佳)算法,该算法基于干净的原始对偶方法,与[15]中获得的竞争因子相匹配。我们的基本算法及其分析非常简单。我们的结果基于较早开发的用于在线算法设计的统一方法[7,8]。具体而言,该分析使用弱对偶性,而不是量身定制的(即针对问题的)潜在功能。我们表明,这种方法对于分析其他经典的在线算法(例如滑雪租赁和TCP确认问题)很有用。我们相信,原始对偶方法也将在其他在线场景中被证明是有用的。原始对偶方法使我们能够将基本竞价算法以一种直接的方式扩展到可以获取更多信息的场景,从而改善最坏情况下的竞争因素。特别是,对于该算法可以使用其他随机信息的情况,在每种产品中感兴趣的购买者的数量受某个小数字d限制的情况,以及一般的风险管理框架。

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