Graph Learning in the Era of LLMs: A Survey from the Perspective of Data, Models, and Tasks
Xunkai Li, Zhengyu Wu, Jiayi Wu, Hanwen Cui, Jishuo Jia, Rong-Hua Li,, Guoren Wang

TL;DR
This survey explores the integration of Graph Neural Networks and Large Language Models to enhance graph learning across diverse data types and tasks, emphasizing data quality and cross-domain generalization.
Contribution
It provides a comprehensive overview of combining GNNs and LLMs for graph learning, highlighting new paradigms, methodologies, and open-source resources.
Findings
Synergistic combination improves graph task performance.
Text descriptions enhance data quality and model capacity.
Framework addresses complex industrial graph scenarios.
Abstract
With the increasing prevalence of cross-domain Text-Attributed Graph (TAG) Data (e.g., citation networks, recommendation systems, social networks, and ai4science), the integration of Graph Neural Networks (GNNs) and Large Language Models (LLMs) into a unified Model architecture (e.g., LLM as enhancer, LLM as collaborators, LLM as predictor) has emerged as a promising technological paradigm. The core of this new graph learning paradigm lies in the synergistic combination of GNNs' ability to capture complex structural relationships and LLMs' proficiency in understanding informative contexts from the rich textual descriptions of graphs. Therefore, we can leverage graph description texts with rich semantic context to fundamentally enhance Data quality, thereby improving the representational capacity of model-centric approaches in line with data-centric machine learning principles. By…
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Taxonomy
TopicsSemantic Web and Ontologies · Biomedical Text Mining and Ontologies
