FedCTR:基于跨平台用户行为数据的联合原生广告点击率预测

Chuhan Wu, Fangzhao Wu, Lingjuan Lyu, Yongfeng Huang, Xing Xie
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引用次数: 23

摘要

原生广告是一种流行的在线广告类型,其形式与网站上显示的原生内容相似。原生广告点击率(CTR)预测对于改善用户体验和平台收益非常有用。然而,由于缺乏明确的用户意图,并且原生广告平台上的用户行为可能不足以推断用户对广告的兴趣。幸运的是,许多在线平台上存在用户行为,可以为用户兴趣挖掘提供补充信息。因此,利用多平台用户行为对原生广告点击率预测非常有用。然而,用户行为具有高度的隐私敏感性,由于用户隐私问题和数据保护规定,不同平台上的行为数据无法直接汇总。现有的点击率预测方法通常需要集中存储用户行为数据进行用户建模,无法直接应用于多平台用户行为的点击率预测任务。在本文中,我们提出了一种联邦原生广告点击率预测方法FedCTR,该方法可以在保护隐私的情况下从跨平台用户行为中学习用户兴趣表示。在每个平台上,本地用户模型从该平台上的本地用户行为中学习用户嵌入。将来自不同平台的本地用户嵌入上传到服务器进行聚合,聚合后的用户嵌入发送到广告平台进行CTR预测。此外,我们将局部差分隐私和差分隐私分别应用于本地和聚合用户嵌入,以更好地保护隐私。此外,我们提出了一个联合框架,用于分布式模型和用户行为的协作模型训练。在真实数据集上进行的大量实验表明,FedCTR可以有效地利用多平台用户行为进行原生广告点击率预测,同时保护隐私。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FedCTR: Federated Native Ad CTR Prediction with Cross-platform User Behavior Data
Native ad is a popular type of online advertisement that has similar forms with the native content displayed on websites. Native ad click-through rate (CTR) prediction is useful for improving user experience and platform revenue. However, it is challenging due to the lack of explicit user intent, and user behaviors on the platform with native ads may be insufficient to infer users’ interest in ads. Fortunately, user behaviors exist on many online platforms that can provide complementary information for user-interest mining. Thus, leveraging multi-platform user behaviors is useful for native ad CTR prediction. However, user behaviors are highly privacy-sensitive, and the behavior data on different platforms cannot be directly aggregated due to user privacy concerns and data protection regulations. Existing CTR prediction methods usually require centralized storage of user behavior data for user modeling, which cannot be directly applied to the CTR prediction task with multi-platform user behaviors. In this article, we propose a federated native ad CTR prediction method named FedCTR, which can learn user-interest representations from cross-platform user behaviors in a privacy-preserving way. On each platform a local user model learns user embeddings from the local user behaviors on that platform. The local user embeddings from different platforms are uploaded to a server for aggregation, and the aggregated ones are sent to the ad platform for CTR prediction. Besides, we apply local differential privacy and differential privacy to the local and aggregated user embeddings, respectively, for better privacy protection. Moreover, we propose a federated framework for collaborative model training with distributed models and user behaviors. Extensive experiments on real-world dataset show that FedCTR can effectively leverage multi-platform user behaviors for native ad CTR prediction in a privacy-preserving manner.
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