Lp quasi-norm minimization: algorithm and applications

IF 1.9 4区 工程技术 Q2 Engineering
Omar M. Sleem, M. E. Ashour, N. S. Aybat, Constantino M. Lagoa
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Abstract

Sparsity finds applications in diverse areas such as statistics, machine learning, and signal processing. Computations over sparse structures are less complex compared to their dense counterparts and need less storage. This paper proposes a heuristic method for retrieving sparse approximate solutions of optimization problems via minimizing the \(\ell _{p}\) quasi-norm, where \(0<p<1\). An iterative two-block algorithm for minimizing the \(\ell _{p}\) quasi-norm subject to convex constraints is proposed. The proposed algorithm requires solving for the roots of a scalar degree polynomial as opposed to applying a soft thresholding operator in the case of \(\ell _{1}\) norm minimization. The algorithm’s merit relies on its ability to solve the \(\ell _{p}\) quasi-norm minimization subject to any convex constraints set. For the specific case of constraints defined by differentiable functions with Lipschitz continuous gradient, a second, faster algorithm is proposed. Using a proximal gradient step, we mitigate the convex projection step and hence enhance the algorithm’s speed while proving its convergence. We present various applications where the proposed algorithm excels, namely, sparse signal reconstruction, system identification, and matrix completion. The results demonstrate the significant gains obtained by the proposed algorithm compared to other \(\ell _{p}\) quasi-norm based methods presented in previous literature.

Abstract Image

Lp 准规范最小化:算法与应用
稀疏性在统计、机器学习和信号处理等多个领域都有应用。与稠密结构相比,稀疏结构的计算复杂度较低,所需的存储空间也较小。本文提出了一种启发式方法,通过最小化 \(\ell _{p}\) 准规范(其中 \(0<p<1\))来检索优化问题的稀疏近似解。本文提出了一种在凸约束条件下最小化 \(\ell _{p}\)准规范的两块迭代算法。与应用软阈值算子最小化 \(\ell _{1}\) 准则的情况不同,所提出的算法需要求解标度多项式的根。该算法的优点在于它能够解决任何凸约束集下的\(\ell _{p}\)准规范最小化问题。针对由具有 Lipschitz 连续梯度的可微分函数定义的约束的特定情况,提出了第二种更快的算法。利用近似梯度步骤,我们减轻了凸投影步骤,从而提高了算法的速度,同时证明了算法的收敛性。我们介绍了所提算法在稀疏信号重建、系统识别和矩阵补全等方面的各种应用。结果表明,与之前文献中提出的其他基于 \(\ell _{p}\) 准规范的方法相比,所提出的算法获得了显著的收益。
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来源期刊
EURASIP Journal on Advances in Signal Processing
EURASIP Journal on Advances in Signal Processing 工程技术-工程:电子与电气
CiteScore
3.50
自引率
10.50%
发文量
109
审稿时长
2.6 months
期刊介绍: The aim of the EURASIP Journal on Advances in Signal Processing is to highlight the theoretical and practical aspects of signal processing in new and emerging technologies. The journal is directed as much at the practicing engineer as at the academic researcher. Authors of articles with novel contributions to the theory and/or practice of signal processing are welcome to submit their articles for consideration.
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