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Information-theoretic bounds for adaptive sparse recovery

机译:适应性稀疏恢复的信息 - 理论界限

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We derive an information-theoretic lower bound for sample complexity in sparse recovery problems where inputs can be chosen sequentially and adaptively. This lower bound is in terms of a simple mutual information expression and unifies many different linear and nonlinear observation models. Using this formula we derive bounds for adaptive compressive sensing (CS), group testing and 1-bit CS problems. We show that adaptivity cannot decrease sample complexity in group testing, 1-bit CS and CS with linear sparsity. In contrast, we show there might be mild performance gains for CS in the sublinear regime. Our unified analysis also allows characterization of gains due to adaptivity from a wider perspective on sparse problems.
机译:我们派生了一个信息 - 理论的下限,用于在稀疏恢复问题中的样本复杂度,其中输入可以顺序地和自适应地选择输入。该下限是在简单的互信息表达式方面,并统一许多不同的线性和非线性观察模型。使用此公式,我们可以为自适应压缩感测(CS),组测试和1位CS问题导出界限。我们表明,适应性不能降低组测试中的样本复杂性,1位CS和具有线性稀疏性的CS。相比之下,我们展示了Sublinear政权中的CS可能会有轻微的性能提升。我们的统一分析还允许由于对稀疏问题的更广泛的观点来表征由于适应性的适应性。

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