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Zooming In on Paid Search Ads—A Consumer-Level Model Calibrated on Aggregated Data

机译:放大付费搜索广告-根据汇总数据校准的消费者级模型

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摘要

We develop a two-stage consumer-level model of paid search advertising response based on standard aggregated data provided to advertisers by major search engines such as Google or Bing. The proposed model uses behavioral primitives in accord with utility maximization and allows recovering parameters of the heterogeneity distribution in consumer preferences. The model is estimated on a novel paid search data set that includes information on the ad copy. To that end, we develop an original framework to analyze composition and design attributes of paid search ads. Our results allow us to correctly evaluate the effects of specific ad properties on ad performance, taking consumer heterogeneity into account. Another benefit of our approach is allowing recovery of preference correlation across the click-through and conversion stage. Based on the estimated correlation between price- and position-sensitivity, we propose a novel contextual targeting scheme in which a coupon is offered to a consumer depending on the position in which the paid search ad was displayed. Our analysis shows that total revenues from conversion can be increased using this targeting scheme while keeping cost constant.
机译:我们根据主要搜索引擎(例如Google或Bing)提供给广告客户的标准汇总数据,开发了一个两阶段的消费者级付费搜索广告响应模型。所提出的模型使用符合效用最大化的行为原语,并允许恢复消费者偏好中异质性分布的参数。该模型是根据新的付费搜索数据集估算的,该数据集包含有关广告文案的信息。为此,我们开发了一个原始框架来分析付费搜索广告的组成和设计属性。我们的结果使我们能够在考虑消费者异质性的情况下正确评估特定广告属性对广告效果的影响。我们方法的另一个好处是可以在点击和转化阶段恢复偏好相关性。基于价格敏感性和位置敏感性之间的估计相关性,我们提出了一种新颖的上下文定位方案,其中,根据付费搜索广告的展示位置,将优惠券提供给消费者。我们的分析表明,使用此定位方案可以增加转化总收入,同时保持成本不变。

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