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An empirical test to forecast the sales rank of a keyword advertisement using a hierarchical Bayes model

机译:使用分层贝叶斯模型预测关键字广告的销售排名的经验检验

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摘要

Online advertising (ad) is a form of promotion that uses the Internet and World Wide Web for the expressed purpose of delivering marketing messages to attract customers. Not surprisingly, how to predict the effectiveness of online advertising has gained lots of research attention. This study introduces the hierarchical Bayesian analysis to the online advertising effect model involving competition with other products. It developed a competition model with a time-decaying effect that is applicable for the sales-rank data in the online marketplace. The proposed model formalizing the hierarchical structure has performed better than the reduced model without having random effect components. It captures the heterogeneous advertising responses across the products as well as search keywords. Our results have implications for online advertising effect measurement, and may help guide advertisers in decision-making.
机译:在线广告(ad)是一种促销形式,它使用Internet和World Wide Web来表达传递营销信息以吸引客户的明确目的。毫不奇怪,如何预测在线广告的有效性已经引起了很多研究关注。本研究将层次贝叶斯分析引入了涉及与其他产品竞争的在线广告效果模型。它开发了一种具有时间衰减效果的竞争模型,该模型适用于在线市场中的销售排名数据。在没有随机效应成分的情况下,提出的将层次结构形式化的模型的性能优于简化模型。它捕获了整个产品以及搜索关键字的异构广告响应。我们的结果对在线广告效果评估有影响,并且可能有助于指导广告商进行决策。

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