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Advertising in a Stream

机译:流媒体广告

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摘要

One of the most important innovations of social networking websites is the notion of a "feed", a sequence of news items presented to the user as a stream that expands as the user scrolls down. The common method for monetizing such streams is to insert ads in between news items. In this paper, we model this setting, and observe that allocation and pricing of ad insertions in a stream poses interesting algorithmic and mechanism design challenges. In particular, we formulate an optimization problem that captures a typical stream ad placement setting. We give an approximation algorithm for this problem that provably achieves a value close to the optimal, and show how this algorithm can be turned into an incentive compatible mechanism. Finally, we conclude with a simple practical algorithm that makes the allocation decisions in an online fashion. We prove this algorithm to be approximately welfare-maximizing and show that it also has good incentive properties.
机译:社交网站的最重要的创新之一是“提要”的概念,它是随着用户向下滚动而扩展的流形式呈现给用户的一系列新闻项目。通过此类流获利的常用方法是在新闻之间插入广告。在本文中,我们对该设置进行建模,并观察到流中广告插入的分配和定价带来了有趣的算法和机制设计挑战。特别是,我们制定了一个优化问题,以捕获典型的流式广告展示位置设置。我们针对该问题给出一种近似算法,该算法可证明地实现了接近最佳值的值,并说明了如何将该算法转变为激励兼容机制。最后,我们以一种简单实用的算法作为结束语,该算法以在线方式做出分配决策。我们证明了该算法是近似福利最大化的,并表明它也具有良好的激励特性。

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