English

PubGraph: A Large-Scale Scientific Knowledge Graph

Artificial Intelligence 2023-05-22 v2 Machine Learning

Abstract

Research publications are the primary vehicle for sharing scientific progress in the form of new discoveries, methods, techniques, and insights. Unfortunately, the lack of a large-scale, comprehensive, and easy-to-use resource capturing the myriad relationships between publications, their authors, and venues presents a barrier to applications for gaining a deeper understanding of science. In this paper, we present PubGraph, a new resource for studying scientific progress that takes the form of a large-scale knowledge graph (KG) with more than 385M entities, 13B main edges, and 1.5B qualifier edges. PubGraph is comprehensive and unifies data from various sources, including Wikidata, OpenAlex, and Semantic Scholar, using the Wikidata ontology. Beyond the metadata available from these sources, PubGraph includes outputs from auxiliary community detection algorithms and large language models. To further support studies on reasoning over scientific networks, we create several large-scale benchmarks extracted from PubGraph for the core task of knowledge graph completion (KGC). These benchmarks present many challenges for knowledge graph embedding models, including an adversarial community-based KGC evaluation setting, zero-shot inductive learning, and large-scale learning. All of the aforementioned resources are accessible at https://pubgraph.isi.edu/ and released under the CC-BY-SA license. We plan to update PubGraph quarterly to accommodate the release of new publications.

Keywords

Cite

@article{arxiv.2302.02231,
  title  = {PubGraph: A Large-Scale Scientific Knowledge Graph},
  author = {Kian Ahrabian and Xinwei Du and Richard Delwin Myloth and Arun Baalaaji Sankar Ananthan and Jay Pujara},
  journal= {arXiv preprint arXiv:2302.02231},
  year   = {2023}
}

Comments

17 Pages, 6 Figures, 9 Tables

R2 v1 2026-06-28T08:32:06.495Z