IEEE Transactions on Network Science and Engineering | 2021

M-Evolve: Structural-Mapping-Based Data Augmentation for Graph Classification

 
 
 
 
 

Abstract


Graph classification, which aims to identify the category labels of graphs, plays a significant role in drug classification, toxicity detection, protein analysis etc. However, the limitation of scale in the benchmark datasets makes it easy for graph classification models to fall into over-fitting and undergeneralization. To improve this, we introduce data augmentation on graphs (i.e. graph augmentation) and present four methods: random mapping, vertex-similarity mapping, motif-random mapping and motif-similarity mapping, to generate more weakly labeled data for small-scale benchmark datasets via heuristic transformation of graph structures. Furthermore, we propose a generic model evolution framework, named M-Evolve, which combines graph augmentation, data filtration and model retraining to optimize pre-trained graph classifiers. Experiments on six benchmark datasets demonstrate that the proposed framework helps existing graph classification models alleviate over-fitting and undergeneralization in the training on small-scale benchmark datasets, which successfully yields an average improvement of 3–13% accuracy on graph classification tasks.

Volume 8
Pages 190-200
DOI 10.1109/TNSE.2020.3032950
Language English
Journal IEEE Transactions on Network Science and Engineering

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