LGJun 14, 2021

Noise-robust Graph Learning by Estimating and Leveraging Pairwise Interactions

arXiv:2106.07451v225 citationsHas Code
Originality Incremental advance
AI Analysis

This addresses label noise in graph neural networks for real-world applications, representing an incremental advance by adapting pairwise methods to noisy graphs.

The paper tackles the problem of classifying nodes in graphs with noisy labels by proposing a pairwise framework that uses structural pairwise interactions as a learning proxy, achieving a promising improvement over state-of-the-art methods in experiments.

Teaching Graph Neural Networks (GNNs) to accurately classify nodes under severely noisy labels is an important problem in real-world graph learning applications, but is currently underexplored. Although pairwise training methods have demonstrated promise in supervised metric learning and unsupervised contrastive learning, they remain less studied on noisy graphs, where the structural pairwise interactions (PI) between nodes are abundant and thus might benefit label noise learning rather than the pointwise methods. This paper bridges the gap by proposing a pairwise framework for noisy node classification on graphs, which relies on the PI as a primary learning proxy in addition to the pointwise learning from the noisy node class labels. Our proposed framework PI-GNN contributes two novel components: (1) a confidence-aware PI estimation model that adaptively estimates the PI labels, which are defined as whether the two nodes share the same node labels, and (2) a decoupled training approach that leverages the estimated PI labels to regularize a node classification model for robust node classification. Extensive experiments on different datasets and GNN architectures demonstrate the effectiveness of PI-GNN, yielding a promising improvement over the state-of-the-art methods. Code is publicly available at https://github.com/TianBian95/pi-gnn.

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