Position-aware Graph Neural Networks

Pages: 7134 - 7143
Published: May 24, 2019
Abstract
Learning node embeddings that capture a node's position within the broader graph structure is crucial for many prediction tasks on graphs. However, existing Graph Neural Network (GNN) architectures have limited power in capturing the position/location of a given node with respect to all other nodes of the graph. Here we propose Position-aware Graph Neural Networks (P-GNNs), a new class of GNNs for computing position-aware node embeddings. P-GNN...
Paper Details
Title
Position-aware Graph Neural Networks
Published Date
May 24, 2019
Pages
7134 - 7143
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