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COSTA: Covariance-Preserving Feature Augmentation for Graph Contrastive Learning

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Graph contrastive learning (GCL) improves graph representation learning, leading to SOTA on various downstream tasks. The graph augmentation step is a vital but scarcely studied step of GCL. In this paper, we show that the node embedding obtained via the graph augmentations is highly biased, somewhat limiting contrastive models from learning discriminative features for downstream tasks. Thus, instead of investigating graph augmentation in the input space, we alternatively propose to perform augmentations on the hidden features (feature augmentation). Inspired by so-called matrix sketching, we propose COSTA, a novel COvariance-preServing feaTure space Augmentation framework for GCL, which generates augmented features by maintaining a "good sketch" of original features. To highlight the superiority of feature augmentation with COSTA, we investigate a single-view setting (in addition to multi-view one) which conserves memory and computations. We show that the feature augmentation with COSTA achieves comparable/better results than graph augmentation based models.

Yifei Zhang, Hao Zhu, Zixing Song, Piotr Koniusz, Irwin King• 2022

Related benchmarks

TaskDatasetResultRank
Node ClassificationPubmed
Accuracy86.2
627
Node ClassificationCora
Accuracy84.3
583
Node ClassificationAmazon Photo
Accuracy92.56
313
Node ClassificationAmazon Computers
Accuracy88.32
167
Node ClassificationCiteseer
Accuracy72.9
51
Node ClassificationDBLP
Accuracy84.5
31
Node ClassificationCoauthor CS
Accuracy92.95
15
Node ClassificationPhoto homogeneous (test)
Macro F1 Score91.3
12
Node ClassificationComputers homogeneous (test)
Macro F186.4
12
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