Graph Augmentation Learning
Shuo Yu, Huafei Huang, Minh N. Dao, Feng Xia

TL;DR
Graph Augmentation Learning (GAL) enhances graph-based applications by improving data quality and model performance, but lacks systematic guidelines and understanding of its effectiveness across different scenarios.
Contribution
This survey provides a comprehensive review of GAL techniques at multiple levels, analyzes their mechanisms, and experimentally validates their effectiveness in various tasks.
Findings
GAL strategies improve downstream task performance
Effectiveness varies across application scenarios
Open issues include heterogeneity and scalability
Abstract
Graph Augmentation Learning (GAL) provides outstanding solutions for graph learning in handling incomplete data, noise data, etc. Numerous GAL methods have been proposed for graph-based applications such as social network analysis and traffic flow forecasting. However, the underlying reasons for the effectiveness of these GAL methods are still unclear. As a consequence, how to choose optimal graph augmentation strategy for a certain application scenario is still in black box. There is a lack of systematic, comprehensive, and experimentally validated guideline of GAL for scholars. Therefore, in this survey, we in-depth review GAL techniques from macro (graph), meso (subgraph), and micro (node/edge) levels. We further detailedly illustrate how GAL enhance the data quality and the model performance. The aggregation mechanism of augmentation strategies and graph learning models are also…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Recommender Systems and Techniques · Human Mobility and Location-Based Analysis
