Learning-based accelerated sparse signal recovery algorithms

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초록

In this paper, we propose an accelerated sparse recovery algorithm based on inexact alternating direction of multipliers. We formulate a sparse recovery problem with a concave regularizer and solve it with the relaxed and accelerated alternating method of multipliers (R-AADMM). We introduce learnable parameters to optimize the algorithm with given data sets. The derived algorithm is an accelerated version of LISTA-AT that controls the threshold for each entry according to the previously recovered estimate. Numerical results show that the proposed Accel-LISTA-AT algorithm converges much faster and recovers the sparse signals with lower mean squared errors than the other learning-based sparse recovery algorithms. (C) 2021 The Korean Institute of Communications and Information Sciences (KICS). Publishing services by Elsevier B.V.

키워드

Iterative soft thresholdingAlternating direction method of multipliersDeep neural networkSHRINKAGESELECTION
제목
Learning-based accelerated sparse signal recovery algorithms
저자
Kim, DohyunPark, Daeyoung
DOI
10.1016/j.icte.2021.03.011
발행일
2021-09
유형
Article
저널명
ICT Express
7
3
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398 ~ 401