FARM: Frequency-Aware Model for Cross-Domain Live-Streaming Recommendation
Xiaodong Li, Ruochen Yang, Shuang Wen, Shen Wang, Yueyang Liu, Guoquan, Wang, Weisong Hu, Qiang Luo, Jiawei Sheng, Tingwen Liu, Jiangxia Cao, Shuang, Yang, Zhaojie Liu

TL;DR
FARM is a novel frequency-aware model that improves cross-domain live-streaming recommendations by capturing sparse user behaviors and aligning preferences across short-video and live-streaming domains, validated through extensive experiments and deployment.
Contribution
The paper introduces a frequency-aware approach using DFT and a cross-domain preference alignment strategy to enhance live-streaming recommendations.
Findings
FARM outperforms existing models in offline and online tests.
The model effectively captures high-frequency user behaviors.
Deployment on Kuaishou serves hundreds of millions of users.
Abstract
Live-streaming services have attracted widespread popularity due to their real-time interactivity and entertainment value. Users can engage with live-streaming authors by participating in live chats, posting likes, or sending virtual gifts to convey their preferences and support. However, the live-streaming services faces serious data-sparsity problem, which can be attributed to the following two points: (1) User's valuable behaviors are usually sparse, e.g., like, comment and gift, which are easily overlooked by the model, making it difficult to describe user's personalized preference. (2) The main exposure content on our platform is short-video, which is 9 times higher than the exposed live-streaming, leading to the inability of live-streaming content to fully model user preference. To this end, we propose a Frequency-Aware Model for Cross-Domain Live-Streaming Recommendation, termed…
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Taxonomy
TopicsImage and Video Quality Assessment · Recommender Systems and Techniques · Peer-to-Peer Network Technologies
MethodsSoftmax · Attention Is All You Need · Attentive Walk-Aggregating Graph Neural Network · ALIGN
