A Large Language Model Enhanced Sequential Recommender for Joint Video and Comment Recommendation
CoRR(2024)
摘要
In online video platforms, reading or writing comments on interesting videos
has become an essential part of the video watching experience. However,
existing video recommender systems mainly model users' interaction behaviors
with videos, lacking consideration of comments in user behavior modeling. In
this paper, we propose a novel recommendation approach called LSVCR by
leveraging user interaction histories with both videos and comments, so as to
jointly conduct personalized video and comment recommendation. Specifically,
our approach consists of two key components, namely sequential recommendation
(SR) model and supplemental large language model (LLM) recommender. The SR
model serves as the primary recommendation backbone (retained in deployment) of
our approach, allowing for efficient user preference modeling. Meanwhile, we
leverage the LLM recommender as a supplemental component (discarded in
deployment) to better capture underlying user preferences from heterogeneous
interaction behaviors. In order to integrate the merits of the SR model and the
supplemental LLM recommender, we design a twostage training paradigm. The first
stage is personalized preference alignment, which aims to align the preference
representations from both components, thereby enhancing the semantics of the SR
model. The second stage is recommendation-oriented fine-tuning, in which the
alignment-enhanced SR model is fine-tuned according to specific objectives.
Extensive experiments in both video and comment recommendation tasks
demonstrate the effectiveness of LSVCR. Additionally, online A/B testing on the
KuaiShou platform verifies the actual benefits brought by our approach. In
particular, we achieve a significant overall gain of 4.13
time.
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