论文标题
具有功能反馈和收敛分析的有效迭代阈值算法
Efficient iterative thresholding algorithms with functional feedbacks and convergence analysis
论文作者
论文摘要
在分析和经验上研究了一类迭代阈值算法的自适应方案。它们基于空空间调整技术的反馈机制(NST+HT+FB)。本文的主要贡献是在每次迭代时都具有可变/自适应指数选择和不同反馈原则的加速收敛分析和证明。这些收敛分析不再需要信号的先验稀疏信息$ s $。 %关键理论在本文中是一个概念,即应考虑在每种迭代中选择的索引数量以加快收敛速度。结果表明,在合理(预处理)限制的等轴测条件下,可以实现从给定线性测量中所有$ S $ -SPARSE信号的均匀恢复。通过选择适当的每次迭代索引支持大小,可以获得加速的收敛率和改善的收敛条件。通过广泛的数值实验可以充分证明并确认理论发现。还观察到,与所有其他最先进的贪婪迭代算法相比,所提出的算法在效率,适应性和准确性方面具有明显有利的平衡。
An accelerated class of adaptive scheme of iterative thresholding algorithms is studied analytically and empirically. They are based on the feedback mechanism of the null space tuning techniques (NST+HT+FB). The main contribution of this article is the accelerated convergence analysis and proofs with a variable/adaptive index selection and different feedback principles at each iteration. These convergence analysis require no longer a priori sparsity information $s$ of a signal. %key theory in this paper is the concept that the number of indices selected at each iteration should be considered in order to speed up the convergence. It is shown that uniform recovery of all $s$-sparse signals from given linear measurements can be achieved under reasonable (preconditioned) restricted isometry conditions. Accelerated convergence rate and improved convergence conditions are obtained by selecting an appropriate size of the index support per iteration. The theoretical findings are sufficiently demonstrated and confirmed by extensive numerical experiments. It is also observed that the proposed algorithms have a clearly advantageous balance of efficiency, adaptivity and accuracy compared with all other state-of-the-art greedy iterative algorithms.