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Estimating Conversion Rate in Display Advertising from Past Performance Data

机译:根据过去的效果数据估算展示广告的转化率

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摘要

In targeted display advertising, the goal is to identify the best opportunities to display a banner ad to an online user who is most likely to take a desired action such as purchasing a product or signing up for a newsletter. Finding the best ad impression, i.e., the opportunity to show an ad to a user, requires the ability to estimate the probability that the user who sees the ad on his or her browser will take an action, i.e., the user will convert. However, conversion probability estimation is a challenging task since there is extreme data sparsity across different data dimensions and the conversion event occurs rarely. In this paper, we present our approach to conversion rate estimation which relies on utilizing past performance observations along user, publisher and advertiser data hierarchies. More specifically, we model the conversion event at different select hierarchical levels with separate binomial distributions and estimate the distribution parameters individually. Then we demonstrate how we can combine these individual estimators using logistic regression to accurately identify conversion events. In our presentation, we also discuss main practical considerations such as data imbalance, missing data, and output probability calibration, which render this estimation problem more difficult but yet need solving for a real-world implementation of the approach. We provide results from real advertising campaigns to demonstrate the effectiveness of our proposed approach.
机译:在定向展示广告中,目标是确定向在线用户展示横幅广告的最佳机会,该在线用户最有可能采取所需的行动,例如购买产品或注册新闻通讯。找到最佳广告印象,即向用户展示广告的机会,需要能够估计在他或她的浏览器上看到广告的用户将采取行动(即用户将转化)的可能性。但是,转换概率估计是一项艰巨的任务,因为跨不同数据维度的数据非常稀疏,并且转换事件很少发生。在本文中,我们介绍了转换率估算的方法,该方法依赖于沿用用户,发布者和广告客户数据层次结构的过去性能观察结果。更具体地说,我们使用不同的二项式分布对不同选择层次级别的转换事件进行建模,并分别估算分布参数。然后,我们演示了如何使用逻辑回归来组合这些单独的估算器,以准确识别转化事件。在我们的演示中,我们还讨论了一些主要的实际考虑因素,例如数据不平衡,数据丢失和输出概率校准,这使此估计问题更加困难,但仍需要解决该方法的实际实现。我们提供实际广告活动的结果,以证明我们提出的方法的有效性。

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