Incomplete Graph Learning: A Comprehensive Survey
Riting Xia, Huibo Liu, Anchen Li, Xueyan Liu, Yan Zhang, Chunxu Zhang,, Bo Yang

TL;DR
This comprehensive survey reviews the emerging field of incomplete graph learning, categorizing methods based on types of missing data, summarizing datasets and metrics, and discussing future challenges to guide further research.
Contribution
First review dedicated to incomplete graph learning, providing systematic classification, insights, and an online resource to support future research in the field.
Findings
Classified incomplete graph learning methods into three categories.
Summarized datasets, evaluation metrics, and application domains.
Discussed challenges and proposed future research directions.
Abstract
Graph learning is a prevalent field that operates on ubiquitous graph data. Effective graph learning methods can extract valuable information from graphs. However, these methods are non-robust and affected by missing attributes in graphs, resulting in sub-optimal outcomes. This has led to the emergence of incomplete graph learning, which aims to process and learn from incomplete graphs to achieve more accurate and representative results. In this paper, we conducted a comprehensive review of the literature on incomplete graph learning. Initially, we categorize incomplete graphs and provide precise definitions of relevant concepts, terminologies, and techniques, thereby establishing a solid understanding for readers. Subsequently, we classify incomplete graph learning methods according to the types of incompleteness: (1) attribute-incomplete graph learning methods, (2) attribute-missing…
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Taxonomy
TopicsText and Document Classification Technologies · Advanced Graph Neural Networks · Face and Expression Recognition
