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A Planning Approach to Revenue Management for Non-Guaranteed Targeted Display Advertising

机译:非保证目标展示广告收入管理的规划方法

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摘要

Many publishers of online display advertising sell their ad resources through event-based auctions in the spot market. Such a way of selling lacks a holistic view of the publisher's ad resource and thus suffers from a well-recognized drawback: the publisher's revenue is often not maximized, particularly due to users' dynamic ad clicking behavior and advertisers' budget constraints. In this study, we propose a planning approach for ad publishers to better allocate their ad resources. Specifically, we propose a framework comprising two building blocks: (i) a mixed-integer nonlinear programming model that solves for the optimal ad resource allocation plan, which maximizes the publisher's revenue, for which we have developed an efficient solution algorithm; and (ii) an arbitrary-point-inflated Poisson regression model that deals with users' ad clicking behavior, whereby we directly forecast the number of clicks, instead of relying on the click-through rate (CTR) as in the literature. The two blocks are closely related in the sense that the output of the regression model serves as the input to the optimization model and the optimization model motivates the development of the regression model. We conduct extensive numerical experiments based on a data set spanning 20 days provided by a leading social network sites firm. Experimental results substantiate the effectiveness of our approach.
机译:在线显示广告的许多出版商通过现场市场的基于事件的拍卖来销售他们的广告资源。这种销售方式缺乏出版商的广告资源的整体视图,因此遭受了公认的缺点:出版商的收入往往不会最大化,特别是由于用户的动态广告单击行为和广告商的预算约束。在这项研究中,我们提出了一个规划方法,以便更好地分配他们的广告资源。具体地,我们提出了一种包括两个构建块的框架:(i)一个混合整数非线性编程模型,用于解决最佳广告资源分配计划,最大化出版商的收入,我们开发了一种高效的解决方案算法; (ii)任意膨胀的泊松回归模型,涉及用户的广告行为,从而直接预测点击次数,而不是依赖于文献中的点击率(CTR)。这两个块在istorsion模型的输出用作优化模型的输入和优化模型的意义上是密切相关的,并且优化模型激励回归模型的开发。我们基于由领先的社交网站公司提供的20天的数据集进行广泛的数值实验。实验结果证实了我们方法的有效性。

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