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Deep Spatio-Temporal Neural Networks for Click-Through Rate Prediction

机译:用于点击率预测的深度时空神经网络

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Click-through rate (CTR) prediction is a critical task in online advertising systems. A large body of research considers each ad independently, but ignores its relationship to other ads that may impact the CTR. In this paper, we investigate various types of auxiliary ads for improving the CTR prediction of the target ad. In particular, we explore auxiliary ads from two viewpoints: one is from the spatial domain, where we consider the contextual ads shown above the target ad on the same page; the other is from the temporal domain, where we consider historically clicked and unclicked ads of the user. The intuitions are that ads shown together may influence each other, clicked ads reflect a user's preferences, and unclicked ads may indicate what a user dislikes to certain extent. In order to effectively utilize these auxiliary data, we propose the Deep Spatio-Temporal neural Networks (DSTNs) for CTR prediction. Our model is able to learn the interactions between each type of auxiliary data and the target ad, to emphasize more important hidden information, and to fuse heterogeneous data in a unified framework. Offline experiments on one public dataset and two industrial datasets show that DSTNs outperform several state-of-the-art methods for CTR prediction. We have deployed the best-performing DSTN in Shenma Search, which is the second largest search engine in China. The A/B test results show that the online CTR is also significantly improved compared to our last serving model.
机译:点击率(CTR)预测是在线广告系统中的关键任务。大型研究员独立考虑每个广告,但忽略其与可能影响CTR可能影响的其他广告的关系。在本文中,我们研究了各种类型的辅助广告,用于改善目标广告的CTR预测。特别是,我们从两个观点探索辅助广告:一个是来自空间域,我们考虑在同一页面上的目标广告上面显示的上下文广告;另一个来自时间域,我们考虑历史上单击和解密的用户广告。直觉是,一起显示的广告可能会影响对方,点击广告反映了用户的偏好,未刻划的广告可以指示用户在某种程度上不喜欢什么。为了有效利用这些辅助数据,我们提出了用于CTR预测的深度时空神经网络(DSTN)。我们的模型能够学习每种类型辅助数据和目标广告之间的交互,以强调更重要的隐藏信息,并在统一的框架中保险为异构数据。在一个公共数据集和两个工业数据集上的离线实验表明,DSTNS优于多种最先进的CTR预测方法。我们已经部署了Shenma搜索的最佳DSTN,这是中国第二大搜索引擎。与我们的上一次服务模型相比,A / B测试结果表明,在线CTR也显着提高。

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