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首页> 外文期刊>IEEE Transactions on Signal Processing >Sparse Regularization: Convergence Of Iterative Jumping Thresholding Algorithm
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Sparse Regularization: Convergence Of Iterative Jumping Thresholding Algorithm

机译:稀疏正则化:迭代跳跃阈值算法的收敛性

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摘要

In recent studies on sparse modeling, nonconvex penalties have received considerable attentions due to their superiorities on sparsity-inducing over the convex counterparts. In this paper, we study the convergence of a nonconvex iterative thresholding algorithm for solving a class of sparse regularized optimization problems, where the corresponding thresholding functions of the penalties are discontinuous with jump discontinuities. Therefore, we call the algorithm the iterative jumping thresholding (IJT) algorithm. The finite support and sign convergence of IJT algorithm is first verified via taking advantage of such jump discontinuity. Together with the introduced restricted Kurdyka–Łojasiewicz property, then the global convergence1 1The global convergence in this paper is defined in the sense that the entire sequence converges regardless of the initial point.
机译:在最近的稀疏建模研究中,由于非凸罚分在稀疏性诱导方面优于凸凸罚分,因此受到了广泛的关注。在本文中,我们研究了求解一类稀疏正则优化问题的非凸迭代阈值算法的收敛性,其中惩罚的相应阈值函数不连续且具有跳跃间断。因此,我们将该算法称为迭代跳跃阈值(IJT)算法。首先利用这种跳跃不连续性来验证IJT算法的有限支持和符号收敛。连同引入的受限制的Kurdyka-Łojasiewicz属性一起,则全局收敛1 1本文的全局收敛是在整个序列都收敛而不考虑起始点的意义上定义的。

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