Meta-GPS++: Enhancing Graph Meta-Learning with Contrastive Learning and Self-Training

Author:

Liu Yonghao1ORCID,Li Mengyu1ORCID,Li Ximing1ORCID,Huang Lan1ORCID,Giunchiglia Fausto2ORCID,Liang Yanchun3ORCID,Feng Xiaoyue1ORCID,Guan Renchu1ORCID

Affiliation:

1. Key Laboratory of Symbolic Computation and Knowledge Engineering of the Ministry of Education, College of Computer Science and Technology, Jilin University, China

2. University of Trento, Italy

3. Zhuhai Laboratory of the Key Laboratory of Symbolic Computation and Knowledge Engineering of the Ministry of Education, Zhuhai College of Science and Technology, China

Abstract

Node classification is an essential problem in graph learning. However, many models typically obtain unsatisfactory performance when applied to few-shot scenarios. Some studies have attempted to combine meta-learning with graph neural networks to solve few-shot node classification on graphs. Despite their promising performance, some limitations remain. First, they employ the node encoding mechanism of homophilic graphs to learn node embeddings, even in heterophilic graphs. Second, existing models based on meta-learning ignore the interference of randomness in the learning process. Third, they are trained using only limited labeled nodes within the specific task, without explicitly utilizing numerous unlabeled nodes. Finally, they treat almost all sampled tasks equally without customizing them for their uniqueness. To address these issues, we propose a novel framework for few-shot node classification called Meta-GPS++ . Specifically, we first adopt an efficient method to learn discriminative node representations on homophilic and heterophilic graphs. Then, we leverage a prototype-based approach to initialize parameters and contrastive learning for regularizing the distribution of node embeddings. Moreover, we apply self-training to extract valuable information from unlabeled nodes. Additionally, we adopt S \({}^{2}\) (scaling & shifting) transformation to learn transferable knowledge from diverse tasks. The results on real-world datasets show the superiority of Meta-GPS++. Our code is available here .

Publisher

Association for Computing Machinery (ACM)

Reference83 articles.

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2. Aleksandar Bojchevski and Stephan Günnemann. 2017. Deep gaussian embedding of graphs: Unsupervised inductive learning via ranking. In International Conference on Learning Representations.

3. Memory Matching Networks for One-Shot Image Recognition

4. Mathilde Caron Ishan Misra Julien Mairal Priya Goyal Piotr Bojanowski and Armand Joulin. 2020. Unsupervised Learning of Visual Features by Contrasting Cluster Assignments. In Advances in Neural Information Processing Systems.

5. Jatin Chauhan, Deepak Nathani, and Manohar Kaul. 2020. Few-shot learning on graphs via super-classes based on graph spectral measures. In International Conference on Learning Representations.

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