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Path to Purchase: A Mutually Exciting Point Process Model for Online Advertising and Conversion

机译:购买途径:在线广告和转化的相互激励点过程模型

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This paper studies the effects of various types of online advertisements on purchase conversion by capturing the dynamic interactions among advertisement clicks themselves. It is motivated by the observation that certain advertisement clicks may not result in immediate purchases, but they stimulate subsequent clicks on other advertisements, which then lead to purchases. We develop a novel model based on mutually exciting point processes, which consider advertisement clicks and purchases as dependent random events in continuous time. We ' incorporate individual random effects to account for consumer heterogeneity and cast the model in the Bayesian hierarchical framework. We construct conversion probability to properly evaluate the conversion effects of online advertisements. We develop simulation algorithms for mutually exciting point processes to compute the conversion probability and for out-of-sample prediction. Model comparison results show the proposed model outperforms the benchmark models that ignore exciting effects among advertisement clicks. Using a proprietary data set, we find that display advertisements have relatively low direct effect on purchase conversion, but they are more likely to stimulate subsequent visits through other advertisement formats. We show that the commonly used measure of conversion rate is biased in favor of search advertisements and underestimates the conversion effect of display advertisements the most. Our model also furnishes a useful tool to predict future purchases and advertisement clicks for the purpose of targeted marketing and customer relationship management.
机译:本文通过捕获广告点击本身之间的动态交互来研究各种类型的在线广告对购买转化的影响。观察到的动机是某些广告点击可能不会导致立即购买,但是它们会刺激其他广告的后续点击,从而导致购买。我们基于相互兴奋的积分过程开发了一种新颖的模型,该模型将广告点击和购买视为连续时间内相关的随机事件。我们结合了个体随机效应来解决消费者的异质性,并将模型转换为贝叶斯分层框架。我们构建转化概率,以正确评估在线广告的转化效果。我们为相互激动的点过程开发了模拟算法,以计算转换概率和样本外预测。模型比较结果表明,所提出的模型优于基准模型,后者忽略了广告点击中令人兴奋的效果。使用专有数据集,我们发现展示广告对购买转化的直接影响相对较低,但它们更有可能通过其他广告格式刺激后续访问。我们发现,常用的转化率衡量指标偏向于搜索广告,并且最大程度地低估了展示广告的转化效果。我们的模型还提供了一个有用的工具,可以预测未来的购买和广告点击,以进行有针对性的营销和客户关系管理。

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