Fusion and Alignment Enhancement with Large Language Models for Tail-item Sequential Recommendation
Zhifu Wei, Yizhou Dang, Guibing Guo, Chuang Zhao, Zhu Sun

TL;DR
This paper introduces FAERec, a framework that enhances tail-item sequential recommendation by fusing and aligning large language model embeddings with traditional ID-based embeddings to improve accuracy.
Contribution
It proposes a novel adaptive fusion mechanism and dual-level alignment approach to generate coherent, structurally consistent item embeddings for better recommendations.
Findings
FAERec outperforms baseline models on three datasets.
The adaptive gating improves embedding fusion quality.
Dual-level alignment enhances recommendation accuracy.
Abstract
Sequential Recommendation (SR) learns user preferences from their historical interaction sequences and provides personalized suggestions. In real-world scenarios, most items exhibit sparse interactions, known as the tail-item problem. This issue limits the model's ability to accurately capture item transition patterns. To tackle this, large language models (LLMs) offer a promising solution by capturing semantic relationships between items. Despite previous efforts to leverage LLM-derived embeddings for enriching tail items, they still face the following limitations: 1) They struggle to effectively fuse collaborative signals with semantic knowledge, leading to suboptimal item embedding quality. 2) Existing methods overlook the structural inconsistency between the ID and LLM embedding spaces, causing conflicting signals that degrade recommendation accuracy. In this work, we propose a…
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