An asynchronous parallel approach to sparse recovery

D. Needell, T. Woolf
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引用次数: 4

Abstract

Asynchronous parallel computing and sparse recovery are two areas that have received recent interest. Asynchronous algorithms are often studied to solve optimization problems where the cost function takes the form Σi=1Mƒi(x), with a common assumption that each ƒi is sparse; that is, each ƒi acts only on a small number of components of x ∈ ℝn. Sparse recovery problems, such as compressed sensing, can be formulated as optimization problems, however, the cost functions ƒi are dense with respect to the components of x, and instead the signal x is assumed to be sparse, meaning that it has only s non-zeros where s ≪ n. Here we address how one may use an asynchronous parallel architecture when the cost functions ƒi are not sparse in x, but rather the signal x is sparse. We propose an asynchronous parallel approach to sparse recovery via a stochastic greedy algorithm, where multiple processors asynchronously update a vector in shared memory containing information on the estimated signal support. We include numerical simulations that illustrate the potential benefits of our proposed asynchronous method.
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稀疏恢复的异步并行方法
异步并行计算和稀疏恢复是最近受到关注的两个领域。通常研究异步算法来解决成本函数为Σi=1Mƒi(x)的优化问题,通常假设每个ƒi都是稀疏的;也就是说,每个ƒi只作用于x∈∈∈n的一小部分分量。稀疏恢复问题,如压缩传感,可以表示为优化问题,然而,成本函数ƒi相对于x的分量是密集的,而信号x被假定为稀疏的,这意味着它只有s < n处的s非零。在这里,我们讨论当成本函数ƒi在x中不是稀疏的,而信号x是稀疏的时,如何使用异步并行架构。我们提出了一种基于随机贪婪算法的异步并行稀疏恢复方法,其中多个处理器异步更新共享内存中包含估计信号支持度信息的向量。我们包括数值模拟来说明我们提出的异步方法的潜在好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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