Jan. 31, 2024, 3:46 p.m. | Aleksandar Poleksic

cs.LG updates on arXiv.org arxiv.org

Relationship inference from sparse data is an important task with applications ranging from product recommendation to drug discovery. A recently proposed linear model for sparse matrix completion has demonstrated surprising advantage in speed and accuracy over more sophisticated recommender systems algorithms. Here we extend the linear model to develop a shallow autoencoder for the dual neighborhood-regularized matrix completion problem. We demonstrate the speed and accuracy advantage of our approach over the existing state-of-the-art in predicting drug-target interactions and drug-disease associations.

accuracy algorithms applications autoencoder cs.lg data discovery drug discovery inference linear linear model matrix product product recommendation recommendation recommender systems relationship speed systems

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