Scope-aware Re-ranking with Gated Attention in Feed

Hao Qian, Qintong Wu, Kai Zhang, Zhiqiang Zhang, Lihong Gu, Xiaodong Zeng, Jun Zhou, Jinjie Gu
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引用次数: 2

Abstract

Modern recommendation systems introduce the re-ranking stage to optimize the entire list directly. This paper focuses on the design of re-ranking framework in feed to optimally model the mutual influence between items and further promote user engagement. On mobile devices, users browse the feed almost in a top-down manner and rarely compare items back and forth. Besides, users often compare item with its adjacency based on their partial observations. Given the distinct user behavior patterns, the modeling of mutual influence between items should be carefully designed. Existing re-ranking models encode the mutual influence between items with sequential encoding methods. However, previous works may be dissatisfactory due to the ignorance of connections between items on different scopes. In this paper, we first discuss Unidirectivity and Locality on the impacts and consequences, then report corresponding solutions in industrial applications. We propose a novel framework based on the empirical evidence from user analysis. To address the above problems, we design a \underlineS cope-aware \underlineR e-ranking with \underlineG ated \underlineA ttention model (SRGA ) to emulate the user behavior patterns from two aspects: 1) we emphasize the influence along the user's common browsing direction; 2) we strength the impacts of pivotal adjacent items within the user visual window. Specifically, we design a global scope attention to encode inter-item patterns unidirectionally from top to bottom. Besides, we devise a local scope attention sliding over the recommendation list to underline interactions among neighboring items. Furthermore, we design a learned gate mechanism to aggregating the information dynamically from local and global scope attention. Extensive offline experiments and online A/B testing demonstrate the benefits of our novel framework. The proposed SRGA model achieves the best performance in offline metrics compared with the state-of-the-art re-ranking methods. Further, empirical results on live traffic validate that our recommender system, equipped with SRGA in the re-ranking stage, improves significantly in user engagement.
范围意识的重新排名与闸门注意在饲料
现代推荐系统引入了重新排名阶段来直接优化整个列表。本文重点研究了feed中重新排名框架的设计,以优化条目之间的相互影响,进一步提高用户参与度。在移动设备上,用户几乎是以自上而下的方式浏览feed,很少来回比较条目。此外,用户通常会根据自己的局部观察,将某项与相邻项进行比较。考虑到不同的用户行为模式,应该仔细设计项目之间相互影响的建模。现有的重排序模型采用顺序编码方法对项目间的相互影响进行编码。然而,由于忽略了不同范围内项目之间的联系,以前的作品可能会令人不满意。在本文中,我们首先讨论了单向性和局部性的影响和后果,然后报告了相应的解决方案在工业应用。我们提出了一个基于用户分析经验证据的新框架。为了解决上述问题,我们设计了一个带有\下划线+ \下划线+的\下划线+关注模型(SRGA),从两个方面模拟用户的行为模式:1)我们强调沿用户共同浏览方向的影响;2)我们加强了用户视觉窗口中关键相邻项目的影响。具体来说,我们设计了一个全局范围的注意力,从上到下单向地对项目间模式进行编码。此外,我们在推荐列表上设计了一个局部范围的注意力滑动,以强调相邻项目之间的交互。此外,我们设计了一种学习门机制,从局部和全局范围的关注动态地聚合信息。大量的离线实验和在线A/B测试证明了我们的新框架的好处。与目前最先进的重新排序方法相比,所提出的SRGA模型在离线度量方面取得了最好的性能。此外,实时流量的实证结果验证了我们的推荐系统,在重新排名阶段配备了SRGA,显著提高了用户参与度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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