Cross-Positional Attention for Debiasing Clicks

Honglei Zhuang, Zhen Qin, Xuanhui Wang, Michael Bendersky, Xinyu Qian, Po Hu, Dan Chary Chen
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引用次数: 21

Abstract

A well-known challenge in leveraging implicit user feedback like clicks to improve real-world search services and recommender systems is its inherent bias. Most existing click models are based on the examination hypothesis in user behaviors and differ in how to model such an examination bias. However, they are constrained by assuming a simple position-based bias or enforcing a sequential order in user examination behaviors. These assumptions are insufficient to capture complex real-world user behaviors and hardly generalize to modern user interfaces (UI) in web applications (e.g., results shown in a grid view). In this work, we propose a fully data-driven neural model for the examination bias, Cross-Positional Attention (XPA), which is more flexible in fitting complex user behaviors. Our model leverages the attention mechanism to effectively capture cross-positional interactions among displayed items and is applicable to arbitrary UIs. We employ XPA in a novel neural click model that can both predict clicks and estimate relevance. Our experiments on offline synthetic data sets show that XPA is robust among different click generation processes. We further apply XPA to a large-scale real-world recommender system, showing significantly better results than baselines in online A/B experiments that involve millions of users. This validates the necessity to model more complex user behaviors than those proposed in the literature.
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消除偏误点击的交叉位置注意
利用用户的隐性反馈(如点击)来改进现实世界的搜索服务和推荐系统,一个众所周知的挑战是其固有的偏见。大多数现有的点击模型都是基于用户行为中的检查假设,并且在如何模拟这种检查偏差方面存在差异。然而,它们受到假设简单的基于位置的偏差或在用户检查行为中强制执行顺序的限制。这些假设不足以捕捉复杂的现实世界用户行为,也很难推广到web应用程序中的现代用户界面(UI)中(例如,网格视图中显示的结果)。在这项工作中,我们提出了一个完全数据驱动的神经模型,交叉位置注意(XPA),它在拟合复杂的用户行为方面更加灵活。我们的模型利用注意机制来有效地捕获显示项目之间的交叉位置交互,并且适用于任意ui。我们将XPA应用于一种新的神经点击模型中,该模型既可以预测点击,也可以估计相关性。我们在离线合成数据集上的实验表明,XPA在不同的点击生成过程中具有鲁棒性。我们进一步将XPA应用于大规模的真实世界推荐系统,在涉及数百万用户的在线a /B实验中显示出明显优于基线的结果。这证实了建立比文献中提出的更复杂的用户行为模型的必要性。
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