Unsupervised Graph Neural Architecture Search with Disentangled Self-supervision

Neural Information Processing Systems 

The existing graph neural architecture search (GNAS) methods heavily rely on supervised labels during the search process, failing to handle ubiquitous scenarios where supervisions are not available. In this paper, we study the problem of unsupervised graph neural architecture search, which remains unexplored in the literature.

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