Publication | Open Access
Multi-Class Imbalanced Graph Convolutional Network Learning
127
Citations
23
References
2020
Year
Unknown Venue
Graph Neural NetworkGraph Representation LearningMachine LearningData ScienceGraph TheoryPattern RecognitionEngineeringFeature LearningNetwork AnalysisComputer ScienceClass Imbalanced RepresentationImbalanced Class DistributionsDeep LearningGraph AnalysisSemi-supervised LearningGraph ProcessingPareto Principle
Networked data often demonstrate the Pareto principle (i.e., 80/20 rule) with skewed class distributions, where most vertices belong to a few majority classes and minority classes only contain a handful of instances. When presented with imbalanced class distributions, existing graph embedding learning tends to bias to nodes from majority classes, leaving nodes from minority classes under-trained. In this paper, we propose Dual-Regularized Graph Convolutional Networks (DR-GCN) to handle multi-class imbalanced graphs, where two types of regularization are imposed to tackle class imbalanced representation learning. To ensure that all classes are equally represented, we propose a class-conditioned adversarial training process to facilitate the separation of labeled nodes. Meanwhile, to maintain training equilibrium (i.e., retaining quality of fit across all classes), we force unlabeled nodes to follow a similar latent distribution to the labeled nodes by minimizing their difference in the embedding space. Experiments on real-world imbalanced graphs demonstrate that DR-GCN outperforms the state-of-the-art methods in node classification, graph clustering, and visualization.
| Year | Citations | |
|---|---|---|
Page 1
Page 1