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On approximate message passing for reconstruction of non-uniformly sparse signals

机译:关于近似消息传递以重构非均匀稀疏信号

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This paper considers the reconstruction of non-uniformly sparse signals from noisy linear observations. By non-uniformly sparse, we mean that the signal coefficients can be partitioned into subsets that differ in the rate at which the coefficients tend to be active (i.e., nonzero). Inspired by recent work of Donoho, Maleki, and Montanari, we design a minimax-optimal approximate message passing (AMP) algorithm and we analyze it using a state evolution (SE) formalism that applies in the limit of very large problem dimensions. For the noiseless case, the SE formalism implies a phase transition curve (PTC) that bisects the admissible region of the sparsity-undersampling plane into two sub-regions: one where perfect recovery is very likely, and one where it is very unlikely. The PTC depends on the ratios of the activity rates and the relative sizes of the coefficient subsets. For the noisy case, we show that the same PTC also bisects the admissible region of the sparsity-undersampling plane into two sub-regions: one where the noise sensitivity remains finite and characterizable, and one where it becomes infinite (as the problem dimensions increase). Furthermore, we derive the formal mean-squared error (MSE) for (sparsity,undersampling) pairs in the region below the PTC. Numerical results suggest that the MSE predicted by the SE formalism closely matches the empirical MSE throughout the admissible region of the sparsity-undersampling plane, so long as the dimensions of the problem are adequately large.1
机译:本文考虑了从噪声线性观测中重建非均匀稀疏信号。所谓非均匀稀疏,是指可以将信号系数划分为多个子集,这些子集的系数趋于活跃的速率不同(即非零)。受Donoho,Maleki和Montanari近期工作的启发,我们设计了一个最小最大最优近似消息传递(AMP)算法,并使用状态演化(SE)形式主义对其进行了分析,该形式适用于非常大的问题维度的限制。对于无噪声的情况,SE形式主义意味着相变曲线(PTC),它将稀疏欠采样平面的可允许区域分为两个子区域:一个极有可能实现完美恢复,而另一个极不可能恢复。 PTC取决于活动率的比率和系数子集的相对大小。对于嘈杂的情况,我们表明同一PTC还将稀疏欠采样平面的允许区域分为两个子区域:一个子区域的噪声灵敏度保持有限且可表征,另一个子区域使噪声灵敏度变得无限大(随着问题尺寸的增加) )。此外,我们得出PTC以下区域中(稀疏,欠采样)对的形式均方误差(MSE)。数值结果表明,只要问题的范围足够大,SE形式主义所预测的MSE就会在稀疏欠采样平面的整个允许区域内与经验MSE紧密匹配。 1

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