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首页|Augment or Not? A Comparative Study of Pure and Augmented Large Language Model Recommenders

Augment or Not? A Comparative Study of Pure and Augmented Large Language Model Recommenders

Augment or Not? A Comparative Study of Pure and Augmented Large Language Model Recommenders

来源:Arxiv_logoArxiv
英文摘要

Large language models (LLMs) have introduced new paradigms for recommender systems by enabling richer semantic understanding and incorporating implicit world knowledge. In this study, we propose a systematic taxonomy that classifies existing approaches into two categories: (1) Pure LLM Recommenders, which rely solely on LLMs, and (2) Augmented LLM Recommenders, which integrate additional non-LLM techniques to enhance performance. This taxonomy provides a novel lens through which to examine the evolving landscape of LLM-based recommendation. To support fair comparison, we introduce a unified evaluation platform that benchmarks representative models under consistent experimental settings, highlighting key design choices that impact effectiveness. We conclude by discussing open challenges and outlining promising directions for future research. This work offers both a comprehensive overview and practical guidance for advancing next-generation LLM-powered recommender.

Wei-Hsiang Huang、Chen-Wei Ke、Wei-Ning Chiu、Yu-Xuan Su、Chun-Chun Yang、Chieh-Yuan Cheng、Yun-Nung Chen、Pu-Jen Cheng

计算技术、计算机技术

Wei-Hsiang Huang,Chen-Wei Ke,Wei-Ning Chiu,Yu-Xuan Su,Chun-Chun Yang,Chieh-Yuan Cheng,Yun-Nung Chen,Pu-Jen Cheng.Augment or Not? A Comparative Study of Pure and Augmented Large Language Model Recommenders[EB/OL].(2025-05-28)[2025-07-16].https://arxiv.org/abs/2505.23053.点此复制

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