Meta Propagation Networks for Graph Few-shot Semi-supervised Learning

Authors

  • Kaize Ding Arizona State University
  • Jianling Wang Texas A&M University
  • James Caverlee Texas A&M University
  • Huan Liu Arizona State University

DOI:

https://doi.org/10.1609/aaai.v36i6.20605

Keywords:

Machine Learning (ML), Data Mining & Knowledge Management (DMKM)

Abstract

Inspired by the extensive success of deep learning, graph neural networks (GNNs) have been proposed to learn expressive node representations and demonstrated promising performance in various graph learning tasks. However, existing endeavors predominately focus on the conventional semi-supervised setting where relatively abundant gold-labeled nodes are provided. While it is often impractical due to the fact that data labeling is unbearably laborious and requires intensive domain knowledge, especially when considering the heterogeneity of graph-structured data. Under the few-shot semi-supervised setting, the performance of most of the existing GNNs is inevitably undermined by the overfitting and oversmoothing issues, largely owing to the shortage of labeled data. In this paper, we propose a decoupled network architecture equipped with a novel meta-learning algorithm to solve this problem. In essence, our framework Meta-PN infers high-quality pseudo labels on unlabeled nodes via a meta-learned label propagation strategy, which effectively augments the scarce labeled data while enabling large receptive fields during training. Extensive experiments demonstrate that our approach offers easy and substantial performance gains compared to existing techniques on various benchmark datasets. The implementation and extended manuscript of this work are publicly available at https://github.com/kaize0409/Meta-PN.

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Published

2022-06-28

How to Cite

Ding, K., Wang, J., Caverlee, J., & Liu, H. (2022). Meta Propagation Networks for Graph Few-shot Semi-supervised Learning. Proceedings of the AAAI Conference on Artificial Intelligence, 36(6), 6524-6531. https://doi.org/10.1609/aaai.v36i6.20605

Issue

Section

AAAI Technical Track on Machine Learning I