What Should I Cite? A RAG Benchmark for Academic Citation Prediction
Leqi Zheng, Jiajun Zhang, Canzhi Chen, Chaokun Wang, Hongwei Li, Yuying Li, Yaoxin Mao, Shannan Yan, Zixin Song, Zhiyuan Feng, Zhaolu Kang, Zirong Chen, Hang Zhang, Qiang Liu, Liang Wang, Ziyang Liu

TL;DR
CiteRAG introduces a comprehensive benchmark for evaluating large language models on academic citation prediction, combining multi-level retrieval, specialized models, and extensive datasets to improve scholarly reference suggestions.
Contribution
It presents the first multi-level RAG benchmark for citation prediction, including datasets, retrieval strategies, and extensive experiments across models.
Findings
Effective multi-level retrieval improves citation prediction accuracy.
Contrastive learning enhances embedding models for complex citation relationships.
Open-source toolkit facilitates reproducible evaluation in academic literature.
Abstract
With the rapid growth of Web-based academic publications, more and more papers are being published annually, making it increasingly difficult to find relevant prior work. Citation prediction aims to automatically suggest appropriate references, helping scholars navigate the expanding scientific literature. Here we present \textbf{CiteRAG}, the first comprehensive retrieval-augmented generation (RAG)-integrated benchmark for evaluating large language models on academic citation prediction, featuring a multi-level retrieval strategy, specialized retrievers, and generators. Our benchmark makes four core contributions: (1) We establish two instances of the citation prediction task with different granularity. Task 1 focuses on coarse-grained list-specific citation prediction, while Task 2 targets fine-grained position-specific citation prediction. To enhance these two tasks, we build a…
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Taxonomy
TopicsMachine Learning in Materials Science · Advanced Graph Neural Networks · Topic Modeling
