Graph Neural Networks, Session 5: Graph Attention Networks
Ideal properties of a convolution-like operator on graphs
Overview of Graph Attention networks
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Tags: deep learning
machine learning
graph neural networks
Karim Khayrat
graph neural networks tutorial
graph neural networks course