Towards Graph Prompt Learning: A Survey and Beyond
Qingqing Long, Yuchen Yan, Peiyan Zhang, Chen Fang, Wentao Cui,, Zhiyuan Ning, Meng Xiao, Ning Cao, Xiao Luo, Lingjun Xu, Shiyue Jiang, Zheng, Fang, Chong Chen, Xian-Sheng Hua, Yuanchun Zhou

TL;DR
This paper surveys the emerging field of graph prompt learning, highlighting methods, challenges, and applications to adapt large-scale pre-train and prompt paradigms for graph-structured data across various domains.
Contribution
It provides a comprehensive categorization and analysis of over 100 works in graph prompt learning, offering foundational insights and identifying unresolved challenges.
Findings
Summarizes key methodologies for graph prompt design.
Analyzes application scenarios and datasets in the field.
Identifies open problems and future research directions.
Abstract
Large-scale "pre-train and prompt learning" paradigms have demonstrated remarkable adaptability, enabling broad applications across diverse domains such as question answering, image recognition, and multimodal retrieval. This approach fully leverages the potential of large-scale pre-trained models, reducing downstream data requirements and computational costs while enhancing model applicability across various tasks. Graphs, as versatile data structures that capture relationships between entities, play pivotal roles in fields such as social network analysis, recommender systems, and biological graphs. Despite the success of pre-train and prompt learning paradigms in Natural Language Processing (NLP) and Computer Vision (CV), their application in graph domains remains nascent. In graph-structured data, not only do the node and edge features often have disparate distributions, but the…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Artificial Intelligence in Healthcare
