Approximation Conjugate Gradient Method for Low-Rank Matrix Recovery

Author:

Chen Zhilong1,Wang Peng123,Zhu Detong4

Affiliation:

1. Mathematics and Statistics College, Hainan Normal University, Haikou 570203, China

2. Key Laboratory of Data Science and Intelligence Education of Ministry of Education, Hainan Normal University, Haikou 570203, China

3. Key Laboratory of Computational Science and Application of Hainan Province, Haikou 570203, China

4. Mathematics and Science College, Shanghai Normal University, Shanghai 200234, China

Abstract

Large-scale symmetric and asymmetric matrices have emerged in predicting the relationship between genes and diseases. The emergence of large-scale matrices increases the computational complexity of the problem. Therefore, using low-rank matrices instead of original symmetric and asymmetric matrices can greatly reduce computational complexity. In this paper, we propose an approximation conjugate gradient method for solving the low-rank matrix recovery problem, i.e., the low-rank matrix is obtained to replace the original symmetric and asymmetric matrices such that the approximation error is the smallest. The conjugate gradient search direction is given through matrix addition and matrix multiplication. The new conjugate gradient update parameter is given by the F-norm of matrix and the trace inner product of matrices. The conjugate gradient generated by the algorithm avoids SVD decomposition. The backtracking linear search is used so that the approximation conjugate gradient direction is computed only once, which ensures that the objective function decreases monotonically. The global convergence and local superlinear convergence of the algorithm are given. The numerical results are reported and show the effectiveness of the algorithm.

Funder

National Natural Science Foundation

Hainan Natural Science Foundation

Publisher

MDPI AG

Reference33 articles.

1. LRMCMDA: Predicting miRNA-diease association by interating low-rank matrix completion with miRNA and disease similarity information;Xu;IEEE Access,2020

2. Guaranteed matrix completion via non-convex factorization;Sun;IEEE Trans. Inf. Theory,2016

3. Tu, S., Boczar, R., Simchowitz, M., Soltanolkotabi, M., and Recht, B. (2016, January 19–24). Low-rank solutions of linear matrix equations via procrustes flow. Proceedings of the International Conference on Machine Learning, PMLR, New York City, NY, USA.

4. Matrix completion from a few entries;Keshavan;IEEE Trans. Inf. Theory,2010

5. Ngo, T., and Saad, Y. (2012, January 3–6). Scaled gradients on grassmann manifolds for matrix completion. Proceedings of the Advances in Neural Information Processing Systems, Lake Tahoe, NV, USA.

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