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Online Learning of Assignments

机译:在线学习作业

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摘要

Which ads should we display in sponsored search in order to maximize our revenue? How should we dynamically rank information sources to maximize the value of the ranking? These applications exhibit strong diminishing returns: Redundancy decreases the marginal utility of each ad or information source. We show that these and other problems can be formalized as repeatedly selecting an assignment of items to positions to maximize a sequence of monotone submodular functions that arrive one by one. We present an efficient algorithm for this general problem and analyze it in the no-regret model. Our algorithm possesses strong theoretical guarantees, such as a performance ratio that converges to the optimal constant of 1 - 1/e. We empirically evaluate our algorithm on two real-world online optimization problems on the web: ad allocation with submodular utilities, and dynamically ranking blogs to detect information cascades.
机译:我们应在赞助商搜索中展示哪些广告以最大化我们的收入?我们应该如何动态地对信息源进行排名,以最大化排名的价值?这些应用程序的收益会大幅下降:冗余会降低每个广告或信息源的边际效用。我们表明,这些问题和其他问题可以形式化为:反复选择位置的项目分配,以最大程度地达到一个一个单调的单调子模函数序列。我们针对此一般问题提出了一种有效的算法,并在无悔模型中对其进行了分析。我们的算法具有强大的理论保证,例如性能比收敛到最佳常数1-1 / e。我们根据网络上的两个现实世界在线优化问题对我们的算法进行经验评估:使用次模块实用程序进行广告分配,以及对博客进行动态排名以检测信息级联。

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