DropEdge: Towards Deep Graph Convolutional Networks on Node Classification
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Abstract
\emph{Over-fitting} and \emph{over-smoothing} are two main obstacles of developing deep Graph Convolutional Networks (GCNs) for node classification. In particular, over-fitting weakens the generalization ability on small dataset, while over-smoothing impedes model training by isolating output representations from the input features with the increase in network depth. This paper proposes DropEdge, a novel and flexible technique to alleviate both issues. At its core, DropEdge randomly removes a certain number of edges from the input graph at each training epoch, acting like a data augmenter and also a message passing reducer. Furthermore, we theoretically demonstrate that DropEdge either reduces the convergence…
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4Topics & keywords
Topics
Keywords
- Smoothing
- Computer science
- Graph
- Generalization
- Node (physics)
- Convergence (economics)
- Artificial intelligence
- Theoretical computer science
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