Towards Robust Graph Contrastive Learning
Abstract
This study enhances adversarial robustness in graph-based self-supervised learning by incorporating adversarial transformations and edge modifications in the contrastive learning framework.
We study the problem of adversarially robust self-supervised learning on graphs. In the contrastive learning framework, we introduce a new method that increases the adversarial robustness of the learned representations through i) adversarial transformations and ii) transformations that not only remove but also insert edges. We evaluate the learned representations in a preliminary set of experiments, obtaining promising results. We believe this work takes an important step towards incorporating robustness as a viable auxiliary task in graph contrastive learning.
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