Solving PhaseLift by Low-rank Riemannian Optimization Methods

被引:5
|
作者
Huang, Wen [1 ]
Gallivan, Kyle A. [2 ]
Zhang, Xiangxiong [3 ]
机构
[1] Catholic Univ Louvain, ICTEAM Inst, Louvain La Neuve, Belgium
[2] Florida State Univ, Dept Math, Tallahassee, FL 32306 USA
[3] Purdue Univ, Dept Math, W Lafayette, IN 47907 USA
关键词
Riemannian optimization; Hermitian positive semidefinite; Riemannian quasi-Newton; Rank adaptive method; RETRIEVAL; ALGORITHM; RECOVERY; CONE;
D O I
10.1016/j.procs.2016.05.422
中图分类号
TP301 [理论、方法];
学科分类号
081202 ;
摘要
A framework, PhaseLift, was recently proposed to solve the phase retrieval problem. In this framework, the problem is solved by optimizing a cost function over the set of complex Hermitian positive semidefinite matrices. This paper considers an approach based on an alternative cost function defined on a union of appropriate manifolds. It is related to the original cost function in a manner that preserves the ability to find a global minimizer and is significantly more efficient computationally. A rank-based optimality condition for stationary points is given and optimization algorithms based on state-of-the-art Riemannian optimization and dynamically reducing rank are proposed. Empirical evaluations are performed using the PhaseLift problem. The new approach is shown to be an effective method of phase retrieval with computational efficiency increased substantially compared to the algorithm used in original PhaseLift paper.
引用
收藏
页码:1125 / 1134
页数:10
相关论文
共 50 条
  • [31] REDUCED BASIS METHODS: FROM LOW-RANK MATRICES TO LOW-RANK TENSORS
    Ballani, Jonas
    Kressner, Daniel
    SIAM JOURNAL ON SCIENTIFIC COMPUTING, 2016, 38 (04): : A2045 - A2067
  • [32] Solving clustered low-rank semidefinite programs arising from polynomial optimization
    Leijenhorst, Nando
    de Laat, David
    MATHEMATICAL PROGRAMMING COMPUTATION, 2024, 16 (03) : 503 - 534
  • [33] Efficient Low-Rank Stochastic Gradient Descent Methods for Solving Semidefinite Programs
    Chen, Jianhui
    Yang, Tianbao
    Zhu, Shenghuo
    ARTIFICIAL INTELLIGENCE AND STATISTICS, VOL 33, 2014, 33 : 122 - 130
  • [34] Low-Rank Methods for Solving Discrete-Time Projected Lyapunov Equations
    Lin, Yiqin
    MATHEMATICS, 2024, 12 (08)
  • [35] A new perspective on low-rank optimization
    Dimitris Bertsimas
    Ryan Cory-Wright
    Jean Pauphilet
    Mathematical Programming, 2023, 202 : 47 - 92
  • [36] Low-rank tensor completion: a Riemannian manifold preconditioning approach
    Kasai, Hiroyuki
    Mishra, Bamdev
    INTERNATIONAL CONFERENCE ON MACHINE LEARNING, VOL 48, 2016, 48
  • [37] Riemannian conjugate gradient method for low-rank tensor completion
    Duan, Shan-Qi
    Duan, Xue-Feng
    Li, Chun-Mei
    Li, Jiao-Fen
    ADVANCES IN COMPUTATIONAL MATHEMATICS, 2023, 49 (03)
  • [38] Low-Rank Optimization With Convex Constraints
    Grussler, Christian
    Rantzer, Anders
    Giselsson, Pontus
    IEEE TRANSACTIONS ON AUTOMATIC CONTROL, 2018, 63 (11) : 4000 - 4007
  • [39] KRYLOV METHODS FOR LOW-RANK REGULARIZATION
    Gazzola, Silvia
    Meng, Chang
    Nagy, James G.
    SIAM JOURNAL ON MATRIX ANALYSIS AND APPLICATIONS, 2020, 41 (04) : 1477 - 1504
  • [40] Learning Robust Low-Rank Approximation for Crowdsourcing on Riemannian Manifold
    Li, Qian
    Wang, Zhichao
    Li, Gang
    Cao, Yanan
    Gang Xiongi
    Guoi, Li
    INTERNATIONAL CONFERENCE ON COMPUTATIONAL SCIENCE (ICCS 2017), 2017, 108 : 285 - 294