Multi-factor Sequential Re-ranking with Perception-Aware Diversification
Yue Xu, Hao Chen, Zefan Wang, Jianwen Yin, Qijie Shen, Dimin Wang,, Feiran Huang, Lixiang Lai, Tao Zhuang, Junfeng Ge, Xia Hu

TL;DR
This paper introduces MPAD, a re-ranking framework that jointly optimizes accuracy and diversity in feed recommendations by modeling user interests and perception, improving user experience in large-scale systems.
Contribution
The paper proposes a novel multi-factor sequential re-ranking method that considers user interest evolution and perception-aware diversity for feed recommendation.
Findings
MPAD effectively balances accuracy and diversity in recommendations.
Implemented in Taobao, MPAD serves billions of items daily to millions of users.
Demonstrates improved user engagement and satisfaction in feed systems.
Abstract
Feed recommendation systems, which recommend a sequence of items for users to browse and interact with, have gained significant popularity in practical applications. In feed products, users tend to browse a large number of items in succession, so the previously viewed items have a significant impact on users' behavior towards the following items. Therefore, traditional methods that mainly focus on improving the accuracy of recommended items are suboptimal for feed recommendations because they may recommend highly similar items. For feed recommendation, it is crucial to consider both the accuracy and diversity of the recommended item sequences in order to satisfy users' evolving interest when consecutively viewing items. To this end, this work proposes a general re-ranking framework named Multi-factor Sequential Re-ranking with Perception-Aware Diversification (MPAD) to jointly optimize…
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Taxonomy
TopicsRecommender Systems and Techniques · Multi-Criteria Decision Making · Text and Document Classification Technologies
