Path-based Deep Network for Candidate Item Matching in Recommenders
Houyi Li, Zhihong Chen, Chenliang Li, Rong Xiao, Hongbo Deng, Peng, Zhang, Yongchao Liu, Haihong Tang

TL;DR
This paper introduces Path-based Deep Network (PDN), a novel matching architecture for recommender systems that enhances personalization and diversity by explicitly modeling user interests and item similarities, leading to improved online performance.
Contribution
The paper proposes PDN, a new deep network architecture combining Trigger Net and Similarity Net to better capture user interests and item relevance, outperforming existing methods in large-scale recommender systems.
Findings
PDN outperforms existing solutions in offline evaluations.
PDN significantly improves user engagement in online A/B tests.
PDN is successfully deployed in Mobile Taobao App handling major traffic.
Abstract
The large-scale recommender system mainly consists of two stages: matching and ranking. The matching stage (also known as the retrieval step) identifies a small fraction of relevant items from billion-scale item corpus in low latency and computational cost. Item-to-item collaborative filter (item-based CF) and embedding-based retrieval (EBR) have been long used in the industrial matching stage owing to its efficiency. However, item-based CF is hard to meet personalization, while EBR has difficulty in satisfying diversity. In this paper, we propose a novel matching architecture, Path-based Deep Network (named PDN), which can incorporate both personalization and diversity to enhance matching performance. Specifically, PDN is comprised of two modules: Trigger Net and Similarity Net. PDN utilizes Trigger Net to capture the user's interest in each of his/her interacted item, and Similarity…
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Taxonomy
TopicsRecommender Systems and Techniques · Image Retrieval and Classification Techniques · Advanced Image and Video Retrieval Techniques
Methodstravel james
