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Smoothed sparse recovery via locally competitive algorithm and forward Euler discretization method

机译:通过局部竞争算法和前向Euler离散化方法进行平滑的稀疏恢复

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This paper considers the problem of sparse recovery whose optimization cost function is a linear combination of a nonsmooth sparsity-inducing term and an l(2)-norm as the metric for the residual error. Since the resultant sparse approximation involves nondifferentiable functions, locally competitive algorithm and forward Euler discretization method are exploited to approximate the nonsmooth objective function, yielding a smooth optimization problem. Alternating direction method of multipliers is then applied as the solver, and Nesterov acceleration trick is integrated for speeding up the computation process. Numerical simulations demonstrate the superiority of the proposed method over several popular sparse recovery schemes in terms of computational complexity and support recovery. (C) 2018 Elsevier B.V. All rights reserved.
机译:本文考虑了稀疏恢复的问题,其最优化成本函数是非光滑的稀疏性诱导项和l(2)范数作为残差度量的线性组合。由于所得的稀疏近似涉及不可微函数,因此利用局部竞争算法和正向欧拉离散化方法来近似非平滑目标函数,从而产生了一个平滑的优化问题。然后将乘法器的交替方向方法用作求解器,并集成了Nesterov加速技巧,以加快计算过程。数值模拟证明了该方法在计算复杂度和支持恢复方面优于几种流行的稀疏恢复方案。 (C)2018 Elsevier B.V.保留所有权利。

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