作为被动搜索的在线广告

Raluca M. Ursu, Andrey Simonov, Eunkyung An
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引用次数: 3

摘要

标准搜索模型假设消费者主动决定他们搜索的产品的顺序、身份和数量。我们记录到,在网络上,很大一部分搜索是以一种更被动的方式发生的,消费者只是对在线广告做出反应,这些广告不允许他们选择他们将看到的产品的时间或身份。使用捕获消费者访问的网站的完整URL地址的点击流面板数据集,我们展示了如何检测点击是否由广告发起。然后我们记录了广告引发的点击占所有网站访问的一半以上,更集中在消费者搜索过程的早期,并导致较少的深度搜索和较少的交易,与这些搜索的被动性质一致。为了解释主动和被动搜索之间的这些系统差异,我们提出并估计了一个简单的模型,该模型可以容纳两种类型的搜索,并描述了在错误地将所有搜索视为主动的模型中产生的估计偏差。最后,我们使用模型的估计来描述不同广告场景下的网站消费者替代模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Online Advertising as Passive Search
Standard search models assume that consumers actively decide on the order, identity, and number of products they search. We document that online, a large fraction of searches happen in a more passive manner, with consumers merely reacting to online advertisements that do not allow them to choose the timing or the identity of products to which they will be exposed. Using a clickstream panel data set capturing full URL addresses of websites consumers visit, we show how to detect whether a click is ad-initiated. We then document that ad-initiated clicks account for more than half of all website arrivals, are more concentrated early on in the consumer search process, and lead to less in-depth searches and fewer transactions, consistent with the passive nature of these searches. To account for these systematic differences between active and passive searches, we propose and estimate a simple model that accommodates both types of searches, and describe the estimation bias arising in models that incorrectly treat all searches as active. Finally, we use our model’s estimates to describe consumer substitution patterns across websites under different advertising scenarios.
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