A Survey of Cross-domain Graph Learning: Progress and Future Directions
- URL: http://arxiv.org/abs/2503.11086v1
- Date: Fri, 14 Mar 2025 04:53:27 GMT
- Title: A Survey of Cross-domain Graph Learning: Progress and Future Directions
- Authors: Haihong Zhao, Chenyi Zi, Aochuan Chen, Jia Li,
- Abstract summary: Graph learning plays a vital role in mining and analyzing complex relationships involved in graph data.<n>CV and NLP have shown powerful cross-domain capabilities that are also significant in graph domains.<n>Inspired by successes in CV and NLP, cross-domain graph learning has once again become a focal point of attention to realizing true graph foundation models.
- Score: 13.645587586453782
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Graph learning plays a vital role in mining and analyzing complex relationships involved in graph data, which is widely used in many real-world applications like transaction networks and communication networks. Foundation models in CV and NLP have shown powerful cross-domain capabilities that are also significant in graph domains. However, existing graph learning approaches struggle with cross-domain tasks. Inspired by successes in CV and NLP, cross-domain graph learning has once again become a focal point of attention to realizing true graph foundation models. In this survey, we present a comprehensive review and analysis of existing works on cross-domain graph learning. Concretely, we first propose a new taxonomy, categorizing existing approaches based on the learned cross-domain information: structure, feature, and structure-feature mixture. Next, we systematically survey representative methods in these categories. Finally, we discuss the remaining limitations of existing studies and highlight promising avenues for future research. Relevant papers are summarized and will be consistently updated at: https://github.com/cshhzhao/Awesome-Cross-Domain-Graph-Learning.
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