Regularization methods for learning incomplete matrices
classification
📊 stat.ML
stat.CO
keywords
normnuclearregularizationsolutionsalgorithmalgorithmsallowsbound
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We use convex relaxation techniques to provide a sequence of solutions to the matrix completion problem. Using the nuclear norm as a regularizer, we provide simple and very efficient algorithms for minimizing the reconstruction error subject to a bound on the nuclear norm. Our algorithm iteratively replaces the missing elements with those obtained from a thresholded SVD. With warm starts this allows us to efficiently compute an entire regularization path of solutions.
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