Low-Rank Matrix Completion Using Graph Neural Network

2020 
In this paper, we propose the graph neural network (GNN)-based matrix completion technique to reconstruct the de-sired low-rank matrix by exploiting the underlying graph structure of the matrix. The proposed approach, referred to as GNN-based low-rank matrix completion (GNN-LRMC), combines the GNN and the neural-network weight update mechanism. The GNN is used to extract the node vectors of the graph using a modified convolution operation. Empirical simulations validate the reconstruction performance of GNN-LRMC in synthetic and Netflix datasets.
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