LIBER: Lifelong User Behavior Modeling Based on Large Language Models
Chenxu Zhu, Shigang Quan, Bo Chen, Jianghao Lin, Xiaoling Cai, Hong, Zhu, Xiangyang Li, Yunjia Xi, Weinan Zhang, Ruiming Tang

TL;DR
LIBER is a novel framework that uses large language models to effectively model lifelong user behavior sequences, addressing challenges of dynamic interests and computational efficiency in recommender systems.
Contribution
The paper introduces LIBER, a new method with three modules that efficiently captures and fuses user behavior information using LLMs for improved recommendations.
Findings
Achieved 3.01% increase in users' play count.
Achieved 7.69% increase in users' play time.
Demonstrated effectiveness on Huawei's music recommendation service.
Abstract
CTR prediction plays a vital role in recommender systems. Recently, large language models (LLMs) have been applied in recommender systems due to their emergence abilities. While leveraging semantic information from LLMs has shown some improvements in the performance of recommender systems, two notable limitations persist in these studies. First, LLM-enhanced recommender systems encounter challenges in extracting valuable information from lifelong user behavior sequences within textual contexts for recommendation tasks. Second, the inherent variability in human behaviors leads to a constant stream of new behaviors and irregularly fluctuating user interests. This characteristic imposes two significant challenges on existing models. On the one hand, it presents difficulties for LLMs in effectively capturing the dynamic shifts in user interests within these sequences, and on the other hand,…
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Taxonomy
TopicsHuman Mobility and Location-Based Analysis · Recommender Systems and Techniques · Technology Use by Older Adults
Methodstravel james
