Graph Convolutional Matrix Completion
The decoder model is a pairwise decoder Aˇ = д(Z), which takes pairs of node embeddings (zi,zj)and predicts entries Aˇ ... Graph Convolutional Matrix Completion KDD’18 Deep Learning Day, August 2018, London, UK.
Decoder, Matrix, Deep, Completion, Graph, Convolutional, Graph convolutional matrix completion
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