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Modified distributed iterative hard thresholding

机译:改进的分布式迭代硬阈值

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摘要

In this paper, we suggest a modified distributed compressed sensing (CS) approach based on the iterative hard thresholding (IHT) algorithm, namely, distributed IHT (DIHT). Our technique improves upon a recently proposed DIHT algorithm in two ways. First, for sensing matrices with i.i.d. Gaussian entries, we suggest an efficient and tight method for computing the step size µ in IHT based on random matrix theory. Second, we improve upon the global computation (GC) step of DIHT by adapting this step to allow for complex data, and reducing the communication cost. The new GC operation involves solving a Top-K problem and is therefore referred to as GC.K. The GC.K-based DIHT has exactly the same recovery results as the centralized IHT given the same step size µ. Numerical results show that our approach significantly outperforms the modified thresholding algorithm (MTA), another GC algorithm for DIHT proposed in previous work. Our simulations also verify that the proposed method of computing µ renders the performance of DIHT close to the oracle-aided approach with a given “optimal” µ.
机译:在本文中,我们提出了一种基于迭代硬阈值(IHT)算法的改进的分布式压缩感知(CS)方法,即分布式IHT(DIHT)。我们的技术以两种方式对最近提出的DIHT算法进行了改进。首先,通过i.d.高斯项,我们建议基于随机矩阵理论在IHT中计算步长µ的高效且严格的方法。其次,我们通过调整DIHT的全局计算(GC)步骤来适应复杂数据并降低通信成本,从而对此进行了改进。新的GC操作涉及解决Top-K问题,因此称为GC.K。在相同步长µ的情况下,基于GC.K的DIHT具有与集中式IHT完全相同的恢复结果。数值结果表明,我们的方法大大优于改进的阈值算法(MTA),后者是先前工作中提出的另一种用于DIHT的GC算法。我们的仿真还验证了在给定的“最佳”μ的情况下,所提出的计算μ的方法可以使DIHT的性能接近oracle辅助方法。

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