학술논문

Optimal Convex Lifted Sparse Phase Retrieval and PCA With an Atomic Matrix Norm Regularizer
Document Type
Periodical
Source
IEEE Transactions on Information Theory IEEE Trans. Inform. Theory Information Theory, IEEE Transactions on. 69(3):1866-1882 Mar, 2023
Subject
Communication, Networking and Broadcast Technologies
Signal Processing and Analysis
Complexity theory
Principal component analysis
Noise measurement
Phase measurement
Sparse matrices
Optimization
Standards
Sparse phase retrieval
sparse PCA
convex relaxation
atomic norm
Language
ISSN
0018-9448
1557-9654
Abstract
We present novel analysis and algorithms for solving sparse phase retrieval and sparse principal component analysis (PCA) with convex lifted matrix formulations. The key innovation is a new mixed atomic matrix norm that, when used as regularization, promotes low-rank matrices with sparse factors. We show that convex programs with this atomic norm as a regularizer provide near-optimal sample complexity and error rate guarantees for sparse phase retrieval and sparse PCA. While we do not know how to solve the convex programs exactly with an efficient algorithm, for the phase retrieval case we carefully analyze the program and its dual and thereby derive a practical heuristic algorithm. We show empirically that this practical algorithm performs similarly to existing state-of-the-art algorithms.