Article ID Journal Published Year Pages File Type
6866457 Neurocomputing 2014 14 Pages PDF
Abstract
Recently, a greedy algorithm called Atomic Decomposition for Minimum Rank Approximation (ADMiRA) was proposed. It has solved the low-rank matrix approximation problem when the rank of the matrix is known. However, the rank of the matrix is usually unknown in practical application. In this paper, a Rank Adaptive Atomic Decomposition for Low-Rank Matrix Completion (RAADLRMC) algorithm is proposed based on the Atomic Decomposition for Minimum Rank Approximation. The advantage of RAADLRMC is that it works when the parameter rank-r of matrix is not given. Furthermore, the step size of iteration is decreased adaptively in order to improve the efficiency and accuracy. As illustrated by our experiments, our algorithm is robust, and the rank of matrix can be predicted accurately.
Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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