A Sharp Sufficient Condition for Sparsity Pattern Recovery

Z. Shaeiri, M. Karami, A. Aghagolzadeh
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Abstract

Sufficient number of linear and noisy measurements for exact and approximate sparsity pattern/support set recovery in the high dimensional setting is derived. Although this problem as been addressed in the recent literature, there is still considerable gaps between those results and the exact limits of the perfect support set recovery. To reduce this gap, in this paper, the sufficient condition is enhanced. A specific form of a Joint Typicality decoder is used for the support recovery task. Two performance metrics are considered for the recovery validation; one, which considers exact support recovery, and the other which seeks partial support recovery. First, an upper bound is obtained on the error probability of the sparsity pattern recovery. Next, using the mentioned upper bound, sufficient number of measurements for reliable support recovery is derived. It is shown that the sufficient condition for reliable support recovery depends on three key parameters of the problem; the noise variance, the minimum nonzero entry of the unknown sparse vector and the sparsity level. Simulations are performed for different sparsity rate, different noise variances, and different distortion levels. The results show that for all the mentioned cases the proposed methodology increases convergence rate of upper bound of the error probability of support recovery significantly which leads to a lower error probability bound compared with previously proposed bounds.
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稀疏模式恢复的一个尖锐充分条件
为在高维环境中精确和近似地恢复稀疏模式/支持集,导出了足够数量的线性和噪声测量。虽然这个问题在最近的文献中得到了解决,但这些结果与完美支持集恢复的确切限制之间仍然存在相当大的差距。为了缩小这一差距,本文增强了充分条件。一种特殊形式的联合典型解码器用于支持恢复任务。对于恢复验证,考虑了两个性能指标;一种是考虑确切的支撑恢复,另一种是寻求部分支撑恢复。首先,给出了稀疏模式恢复误差概率的上界;其次,利用上述上界,导出了可靠的支持恢复的足够数量的测量。结果表明,支护可靠回收的充分条件取决于问题的三个关键参数;噪声方差、未知稀疏向量的最小非零入口和稀疏度。在不同的稀疏度、不同的噪声方差和不同的失真水平下进行了仿真。结果表明,对于上述所有情况,所提出的方法都显著提高了支持恢复错误概率上界的收敛速度,从而使错误概率界比先前提出的界更低。
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