Saved in:
Bibliographic Details
Main Authors: Zhang, Chenghao, Long, Qingqing, Wang, Ludi, Cui, Wenjuan, Yu, Jianjun, Du, Yi
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2508.15392
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866909746941919232
author Zhang, Chenghao
Long, Qingqing
Wang, Ludi
Cui, Wenjuan
Yu, Jianjun
Du, Yi
author_facet Zhang, Chenghao
Long, Qingqing
Wang, Ludi
Cui, Wenjuan
Yu, Jianjun
Du, Yi
contents Text-attributed graphs(TAGs) are pervasive in real-world systems,where each node carries its own textual features. In many cases these graphs are inherently heterogeneous, containing multiple node types and diverse edge types. Despite the ubiquity of such heterogeneous TAGs, there remains a lack of large-scale benchmark datasets. This shortage has become a critical bottleneck, hindering the development and fair comparison of representation learning methods on heterogeneous text-attributed graphs. In this paper, we introduce CITE - Catalytic Information Textual Entities Graph, the first and largest heterogeneous text-attributed citation graph benchmark for catalytic materials. CITE comprises over 438K nodes and 1.2M edges, spanning four relation types. In addition, we establish standardized evaluation procedures and conduct extensive benchmarking on the node classification task, as well as ablation experiments on the heterogeneous and textual properties of CITE. We compare four classes of learning paradigms, including homogeneous graph models, heterogeneous graph models, LLM(Large Language Model)-centric models, and LLM+Graph models. In a nutshell, we provide (i) an overview of the CITE dataset, (ii) standardized evaluation protocols, and (iii) baseline and ablation experiments across diverse modeling paradigms.
format Preprint
id arxiv_https___arxiv_org_abs_2508_15392
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle CITE: A Comprehensive Benchmark for Heterogeneous Text-Attributed Graphs on Catalytic Materials
Zhang, Chenghao
Long, Qingqing
Wang, Ludi
Cui, Wenjuan
Yu, Jianjun
Du, Yi
Machine Learning
Computation and Language
Text-attributed graphs(TAGs) are pervasive in real-world systems,where each node carries its own textual features. In many cases these graphs are inherently heterogeneous, containing multiple node types and diverse edge types. Despite the ubiquity of such heterogeneous TAGs, there remains a lack of large-scale benchmark datasets. This shortage has become a critical bottleneck, hindering the development and fair comparison of representation learning methods on heterogeneous text-attributed graphs. In this paper, we introduce CITE - Catalytic Information Textual Entities Graph, the first and largest heterogeneous text-attributed citation graph benchmark for catalytic materials. CITE comprises over 438K nodes and 1.2M edges, spanning four relation types. In addition, we establish standardized evaluation procedures and conduct extensive benchmarking on the node classification task, as well as ablation experiments on the heterogeneous and textual properties of CITE. We compare four classes of learning paradigms, including homogeneous graph models, heterogeneous graph models, LLM(Large Language Model)-centric models, and LLM+Graph models. In a nutshell, we provide (i) an overview of the CITE dataset, (ii) standardized evaluation protocols, and (iii) baseline and ablation experiments across diverse modeling paradigms.
title CITE: A Comprehensive Benchmark for Heterogeneous Text-Attributed Graphs on Catalytic Materials
topic Machine Learning
Computation and Language
url https://arxiv.org/abs/2508.15392