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Auteurs principaux: Zhang, Yinan, Chen, Zhixi, Jing, Jiazheng, Shen, Zhiqi
Format: Preprint
Publié: 2026
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Accès en ligne:https://arxiv.org/abs/2602.04225
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author Zhang, Yinan
Chen, Zhixi
Jing, Jiazheng
Shen, Zhiqi
author_facet Zhang, Yinan
Chen, Zhixi
Jing, Jiazheng
Shen, Zhiqi
contents Large Language Models (LLMs) have been widely applied across multiple domains for their broad knowledge and strong reasoning capabilities. However, applying them to recommendation systems is challenging since it is hard for LLMs to extract user preferences from large, sparse user-item logs, and real-time per-user ranking over the full catalog is too time-consuming to be practical. Moreover, many existing recommender systems focus solely on ranking items while overlooking explanations, which could help improve predictive accuracy and make recommendations more convincing to users. Inspired by recent works that achieve strong recommendation performance by forecasting near-term item popularity, we propose TRAIL (TRend and explAnation Integrated Learner). TRAIL is a fine-tuned LLM that jointly predicts short-term item popularity and generates faithful natural-language explanations. It employs contrastive learning with positive and negative pairs to align its scores and explanations with structured trend signals, yielding accurate and explainable popularity predictions. Extensive experiments show that TRAIL outperforms strong baselines and produces coherent, well-grounded explanations.
format Preprint
id arxiv_https___arxiv_org_abs_2602_04225
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Following the TRAIL: Predicting and Explaining Tomorrow's Hits with a Fine-Tuned LLM
Zhang, Yinan
Chen, Zhixi
Jing, Jiazheng
Shen, Zhiqi
Information Retrieval
Large Language Models (LLMs) have been widely applied across multiple domains for their broad knowledge and strong reasoning capabilities. However, applying them to recommendation systems is challenging since it is hard for LLMs to extract user preferences from large, sparse user-item logs, and real-time per-user ranking over the full catalog is too time-consuming to be practical. Moreover, many existing recommender systems focus solely on ranking items while overlooking explanations, which could help improve predictive accuracy and make recommendations more convincing to users. Inspired by recent works that achieve strong recommendation performance by forecasting near-term item popularity, we propose TRAIL (TRend and explAnation Integrated Learner). TRAIL is a fine-tuned LLM that jointly predicts short-term item popularity and generates faithful natural-language explanations. It employs contrastive learning with positive and negative pairs to align its scores and explanations with structured trend signals, yielding accurate and explainable popularity predictions. Extensive experiments show that TRAIL outperforms strong baselines and produces coherent, well-grounded explanations.
title Following the TRAIL: Predicting and Explaining Tomorrow's Hits with a Fine-Tuned LLM
topic Information Retrieval
url https://arxiv.org/abs/2602.04225