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Inductive Matrix Completion Based on Graph Neural Networks
[article]
2020
arXiv
pre-print
We propose an inductive matrix completion model without using side information. By factorizing the (rating) matrix into the product of low-dimensional latent embeddings of rows (users) and columns (items), a majority of existing matrix completion methods are transductive, since the learned embeddings cannot generalize to unseen rows/columns or to new matrices. To make matrix completion inductive, most previous works use content (side information), such as user's age or movie's genre, to make
arXiv:1904.12058v3
fatcat:bodp3t4hencl5fjck4ykj5yflu