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A simple homotopy proximal mapping algorithm for compressive sensing

机译:一种用于压缩感知的简单同伦近邻映射算法

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In this paper, we present novel yet simple homotopy proximal mapping algorithms for reconstructing a sparse signal from (noisy) linear measurements of the signal or for learning a sparse linear model from observed data, where the former task is well-known in the field of compressive sensing and the latter task is known as model selection in statistics and machine learning. The algorithms adopt a simple proximal mapping of the 1 norm at each iteration and gradually reduces the regularization parameter for the 1 norm. We prove a global linear convergence of the proposed homotopy proximal mapping (HPM) algorithms for recovering the sparse signal under three different settings (i) sparse signal recovery under noiseless measurements, (ii) sparse signal recovery under noisy measurements, and (iii) nearly-sparse signal recovery under sub-Gaussian noisy measurements. In particular, we show that when the measurement matrix satisfies restricted isometric properties (RIP), one of the proposed algorithms with an appropriate setting of a parameter based on the RIP constants converges linearly to the optimal solution up to the noise level. In addition, in setting (iii), a practical variant of the proposed algorithms does not rely on the RIP constants and our results for sparse signal recovery are better than the previous results in the sense that our recovery error bound is smaller. Furthermore, our analysis explicitly exhibits that more observations lead to not only more accurate recovery but also faster convergence. Finally our empirical studies provide further support for the proposed homotopy proximal mapping algorithm and verify the theoretical results.
机译:在本文中,我们提出了新颖而简单的同伦近端映射算法,用于从信号的(噪声)线性测量中重建稀疏信号或从观察到的数据中学习稀疏线性模型,其中前一个任务是众所周知的压缩感知和后一项任务在统计和机器学习中称为模型选择。该算法在每次迭代中采用1范数的简单近端映射,并逐渐减少1范数的正则化参数。我们证明了用于在三种不同设置下恢复稀疏信号的拟议同伦近端映射(HPM)算法的全局线性收敛性(i)在无噪声测量下的稀疏信号恢复,(ii)在噪声测量下的稀疏信号恢复以及(iii)次高斯噪声测量下的信号稀疏恢复。特别地,我们表明,当测量矩阵满足受限的等距特性(RIP)时,基于RIP常数对参数进行适当设置的建议算法之一会线性收敛至最佳解决方案,直至达到噪声水平。另外,在设置(iii)中,所提出算法的实际变型不依赖于RIP常数,并且在我们的恢复误差范围较小的意义上,我们的稀疏信号恢复结果优于先前结果。此外,我们的分析明确表明,更多的观察结果不仅会导致更准确的恢复,而且会导致更快的收敛。最后,我们的经验研究为提出的同态近端映射算法提供了进一步的支持,并验证了理论结果。

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