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BEHAVIOR OF GREEDY SPARSE REPRESENTATION ALGORITHMS ON NESTED SUPPORTS

机译:贪污稀疏表示算法对嵌套支持的行为

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In this work, we study the links between the recovery properties of sparse signals for Orthogonal Matching Pursuit (OMP) and the whole General MP class over nested supports. We show that the optimality of those algorithms is not locally nested: there is a dictionary and supports / and J with J included in I such that OMP will recover all signals of support I, but not all signals of support J. We also show that the optimality of OMP is globally nested: if OMP can recover all s-sparse signals, then it can recover all s'-sparse signals with s' smaller than s. We also provide a tighter version of Donoho and Elad's spark theorem, which allows us to complete Tropp's proof that sparse representation algorithms can only be optimal for all s-sparse signals if s is strictly lower than half the spark of the dictionary.
机译:在这项工作中,我们研究了正交匹配追求(OMP)和整个通用MP类的稀疏信号恢复属性之间的链接。我们表明,这些算法的最优性不是本地嵌套:有一个字典和支持/和j,其中j包括j,使得OMP将恢复支持I的所有信号,但并非所有支持J.我们也显示出来OMP的最优性是全局嵌套的:如果OMP可以恢复所有S稀疏信号,则它可以恢复小于S的S'-稀疏信号。我们还提供了一个更紧凑的Donoho和Elad的Spark定理版本,它允许我们完成Tropp的证据,即如果s严格低于字典的半火花,则稀疏表示算法只能最佳。

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