可解释的点击率预测通过层次注意

Zeyu Li, Wei Cheng, Yang Chen, Haifeng Chen, Wei Wang
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引用次数: 89

摘要

点击率(CTR)预测是网络广告和营销中的一项关键任务。对于这个问题,现有的方法,无论是浅架构还是深架构,都有三个主要的缺点。首先,他们通常缺乏有说服力的理由来解释模型的结果。无法解释的预测和建议可能难以验证,因此不可靠和不值得信任。在许多应用中,不恰当的建议甚至可能带来严重的后果。其次,现有方法在分析高阶特征交互时效率较低。第三,不同语义子空间中特征交互的多义性在很大程度上被忽略。在本文中,我们提出了使用具有多头自关注的Transformer进行特征学习的InterHAt。最重要的是,分层注意层用于预测点击率,同时提供预测结果的可解释见解。InterHAt通过低计算复杂度的高效注意力聚合策略捕获高阶特征交互。在4个公开真实数据集和1个合成数据集上的大量实验证明了InterHAt的有效性和高效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Interpretable Click-Through Rate Prediction through Hierarchical Attention
Click-through rate (CTR) prediction is a critical task in online advertising and marketing. For this problem, existing approaches, with shallow or deep architectures, have three major drawbacks. First, they typically lack persuasive rationales to explain the outcomes of the models. Unexplainable predictions and recommendations may be difficult to validate and thus unreliable and untrustworthy. In many applications, inappropriate suggestions may even bring severe consequences. Second, existing approaches have poor efficiency in analyzing high-order feature interactions. Third, the polysemy of feature interactions in different semantic subspaces is largely ignored. In this paper, we propose InterHAt that employs a Transformer with multi-head self-attention for feature learning. On top of that, hierarchical attention layers are utilized for predicting CTR while simultaneously providing interpretable insights of the prediction results. InterHAt captures high-order feature interactions by an efficient attentional aggregation strategy with low computational complexity. Extensive experiments on four public real datasets and one synthetic dataset demonstrate the effectiveness and efficiency of InterHAt.
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