Fine-grained Semantics Integration for Large Language Model-based Recommendation
Jiawei Feng, Xiaoyu Kong, Leheng Sheng, Bin Wu, Chao Yi, Feifang Yang, Xiang-Rong Sheng, Han Zhu, Xiang Wang, Jiancan Wu, Xiangnan He

TL;DR
This paper introduces TS-Rec, a method that enhances LLM-based recommendation systems by integrating fine-grained token-level semantics, leading to improved performance over existing models.
Contribution
TS-Rec proposes semantic-aware embedding initialization and token-level semantic alignment to better connect SID tokens with item semantics in LLM recommenders.
Findings
TS-Rec outperforms baseline models on real-world benchmarks.
Fine-grained semantic integration improves recommendation accuracy.
The approach demonstrates consistent gains across multiple metrics.
Abstract
Recent advances in Large Language Models (LLMs) have shifted in recommendation systems from the discriminative paradigm to the LLM-based generative paradigm, where the recommender autoregressively generates sequences of semantic identifiers (SIDs) for target items conditioned on historical interaction. While prevalent LLM-based recommenders have demonstrated performance gains by aligning pretrained LLMs between the language space and the SID space, modeling the SID space still faces two fundamental challenges: (1) Semantically Meaningless Initialization: SID tokens are randomly initialized, severing the semantic linkage between the SID space and the pretrained language space at start point, and (2) Coarse-grained Alignment: existing SFT-based alignment tasks primarily focus on item-level optimization, while overlooking the semantics of individual tokens within SID sequences. To address…
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Taxonomy
TopicsRecommender Systems and Techniques · Topic Modeling · Explainable Artificial Intelligence (XAI)
