RTRMC: A Riemannian trust-region method for low-rank matrix completion
–Neural Information Processing Systems
We consider large matrices of low rank. We address the problem of recovering such matrices when most of the entries are unknown. Matrix completion finds applications in recommender systems. In this setting, the rows of the matrix may correspond to items and the columns may correspond to users. The known entries are the ratings given by users to some items.
Neural Information Processing Systems
Mar-15-2024, 00:47:52 GMT
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