CLNov 12, 2025

GSAP-ERE: Fine-Grained Scholarly Entity and Relation Extraction Focused on Machine Learning

arXiv:2511.09411v1h-index: 4
Originality Synthesis-oriented
AI Analysis

This work addresses the need for structured data to improve understanding and reproducibility in ML research, though it is incremental as it builds on existing information extraction methods.

The authors tackled the problem of extracting fine-grained information from machine learning publications by introducing GSAP-ERE, a manually curated dataset with 10 entity types and 18 relation types from 100 papers, enabling models to achieve NER: 80.6% and RE: 54.0% performance.

Research in Machine Learning (ML) and AI evolves rapidly. Information Extraction (IE) from scientific publications enables to identify information about research concepts and resources on a large scale and therefore is a pathway to improve understanding and reproducibility of ML-related research. To extract and connect fine-grained information in ML-related research, e.g. method training and data usage, we introduce GSAP-ERE. It is a manually curated fine-grained dataset with 10 entity types and 18 semantically categorized relation types, containing mentions of 63K entities and 35K relations from the full text of 100 ML publications. We show that our dataset enables fine-tuned models to automatically extract information relevant for downstream tasks ranging from knowledge graph (KG) construction, to monitoring the computational reproducibility of AI research at scale. Additionally, we use our dataset as a test suite to explore prompting strategies for IE using Large Language Models (LLM). We observe that the performance of state-of-the-art LLM prompting methods is largely outperformed by our best fine-tuned baseline model (NER: 80.6%, RE: 54.0% for the fine-tuned model vs. NER: 44.4%, RE: 10.1% for the LLM). This disparity of performance between supervised models and unsupervised usage of LLMs suggests datasets like GSAP-ERE are needed to advance research in the domain of scholarly information extraction.

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