LLM-Alignment Live-Streaming Recommendation
LLM-Alignment Live-Streaming Recommendation
In recent years, integrated short-video and live-streaming platforms have gained massive global adoption, offering dynamic content creation and consumption. Unlike pre-recorded short videos, live-streaming enables real-time interaction between authors and users, fostering deeper engagement. However, this dynamic nature introduces a critical challenge for recommendation systems (RecSys): the same live-streaming vastly different experiences depending on when a user watching. To optimize recommendations, a RecSys must accurately interpret the real-time semantics of live content and align them with user preferences.
Yueyang Liu、Jiangxia Cao、Shen Wang、Shuang Wen、Xiang Chen、Xiangyu Wu、Shuang Yang、Zhaojie Liu、Kun Gai、Guorui Zhou
计算技术、计算机技术
Yueyang Liu,Jiangxia Cao,Shen Wang,Shuang Wen,Xiang Chen,Xiangyu Wu,Shuang Yang,Zhaojie Liu,Kun Gai,Guorui Zhou.LLM-Alignment Live-Streaming Recommendation[EB/OL].(2025-04-07)[2025-06-23].https://arxiv.org/abs/2504.05217.点此复制
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