Graph Learning under Distribution Shifts: A Comprehensive Survey on Domain Adaptation, Out-of-distribution, and Continual Learning
Man Wu, Xin Zheng, Qin Zhang, Xiao Shen, Xiong Luo, Xingquan Zhu,, Shirui Pan

TL;DR
This survey comprehensively reviews recent methods addressing distribution shifts in graph learning, focusing on domain adaptation, out-of-distribution, and continual learning to improve robustness and generalization.
Contribution
It categorizes graph learning under distribution shifts into key scenarios, providing a detailed taxonomy and discussing progress, applications, and future directions.
Findings
Taxonomy of graph distribution shift scenarios
Analysis of current approaches and strategies
Guidance for future research in robust graph learning
Abstract
Graph learning plays a pivotal role and has gained significant attention in various application scenarios, from social network analysis to recommendation systems, for its effectiveness in modeling complex data relations represented by graph structural data. In reality, the real-world graph data typically show dynamics over time, with changing node attributes and edge structure, leading to the severe graph data distribution shift issue. This issue is compounded by the diverse and complex nature of distribution shifts, which can significantly impact the performance of graph learning methods in degraded generalization and adaptation capabilities, posing a substantial challenge to their effectiveness. In this survey, we provide a comprehensive review and summary of the latest approaches, strategies, and insights that address distribution shifts within the context of graph learning.…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning
