2020
DOI: 10.48550/arxiv.2008.00077
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Neural Architecture Search in Graph Neural Networks

Matheus Nunes,
Gisele L. Pappa

Abstract: Performing analytical tasks over graph data has become increasingly interesting due to the ubiquity and large availability of relational information. However, unlike images or sentences, there is no notion of sequence in networks. Nodes (and edges) follow no absolute order, and it is hard for traditional machine learning (ML) algorithms to recognize a pattern and generalize their predictions on this type of data. Graph Neural Networks (GNN) successfully tackled this problem. They became popular after the gener… Show more

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