Iterative Adaptively Regularized LASSO-ADMM Algorithm for CFAR Estimation of Sparse Signals: IAR-LASSO-ADMM-CFAR Algorithm

08/24/2022
by   Huiyue Yi, et al.
0

The least-absolute shrinkage and selection operator (LASSO) is a regularization technique for estimating sparse signals of interest emerging in various applications and can be efficiently solved via the alternating direction method of multipliers (ADMM), which will be termed as LASSO-ADMM algorithm. The choice of the regularization parameter has significant impact on the performance of LASSO-ADMM algorithm. However, the optimization for the regularization parameter in the existing LASSO-ADMM algorithms has not been solved yet. In order to optimize this regularization parameter, we propose an efficient iterative adaptively regularized LASSO-ADMM (IAR-LASSO-ADMM) algorithm by iteratively updating the regularization parameter in the LASSO-ADMM algorithm. Moreover, a method is designed to iteratively update the regularization parameter by adding an outer iteration to the LASSO-ADMM algorithm. Specifically, at each outer iteration the zero support of the estimate obtained by the inner LASSO-ADMM algorithm is utilized to estimate the noise variance, and the noise variance is utilized to update the threshold according to a pre-defined const false alarm rate (CFAR). Then, the resulting threshold is utilized to update both the non-zero support of the estimate and the regularization parameter, and proceed to the next inner iteration. In addition, a suitable stopping criterion is designed to terminate the outer iteration process to obtain the final non-zero support of the estimate of the sparse measurement signals. The resulting algorithm is termed as IAR-LASSO-ADMM-CFAR algorithm. Finally, simulation results have been presented to show that the proposed IAR-LASSO-ADMM-CFAR algorithm outperforms the conventional LASSO-ADMM algorithm and other existing algorithms in terms of reconstruction accuracy, and its sparsity order estimate is more accurate than the existing algorithms.

READ FULL TEXT
research
05/19/2020

Lasso formulation of the shortest path problem

The shortest path problem is formulated as an l_1-regularized regression...
research
06/04/2019

A Nonlinear Acceleration Method for Iterative Algorithms

Iterative methods have led to better understanding and solving problems ...
research
01/15/2018

Two-Stage LASSO ADMM Signal Detection Algorithm For Large Scale MIMO

This paper explores the benefit of using some of the machine learning te...
research
12/30/2019

An Inner-Outer Iterative Method for Edge Preservation in Image Restoration and Reconstruction

We present a new inner-outer iterative algorithm for edge enhancement in...
research
12/31/2012

Blind Analysis of EGM Signals: Sparsity-Aware Formulation

This technical note considers the problems of blind sparse learning and ...
research
08/20/2018

Triangle Lasso for Simultaneous Clustering and Optimization in Graph Datasets

Recently, network lasso has drawn many attentions due to its remarkable ...
research
10/28/2016

Algorithms for Fitting the Constrained Lasso

We compare alternative computing strategies for solving the constrained ...

Please sign up or login with your details

Forgot password? Click here to reset