IRAIFeb 13, 2025

A Survey on LLM-based News Recommender Systems

arXiv:2502.09797v22 citationsh-index: 5
Originality Synthesis-oriented
AI Analysis

It provides a comprehensive overview for researchers and practitioners working on news recommendation systems, but is incremental as it synthesizes existing work rather than introducing new methods.

This survey paper addresses the lack of systematic reviews on LLM-based news recommender systems by categorizing and analyzing methodologies, conducting experiments to measure LLM impact on performance, and exploring future directions.

News recommender systems play a critical role in mitigating the information overload problem. In recent years, due to the successful applications of large language model technologies, researchers have utilized Discriminative Large Language Models (DLLMs) or Generative Large Language Models (GLLMs) to improve the performance of news recommender systems. Although several recent surveys review significant challenges for deep learning-based news recommender systems, such as fairness, privacy-preserving, and responsibility, there is a lack of a systematic survey on Large Language Model (LLM)-based news recommender systems. In order to review different core methodologies and explore potential issues systematically, we categorize DLLM-based and GLLM-based news recommender systems under the umbrella of LLM-based news recommender systems. In this survey, we first overview the development of deep learning-based news recommender systems. Then, we review LLM-based news recommender systems based on three aspects: news-oriented modeling, user-oriented modeling, and prediction-oriented modeling. Next, we examine the challenges from various perspectives, including datasets, benchmarking tools, and methodologies. Furthermore, we conduct extensive experiments to analyze how large language model technologies affect the performance of different news recommender systems. Finally, we comprehensively explore the future directions for LLM-based news recommendations in the era of LLMs.

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