Recent advances in quantized compressed sensing and high-dimensional estimation have shown that signal recovery is even feasible under strong non-linear distortions in the observation process. An important characteristic of associated guarantees is uniformity, i.e., recovery succeeds for an entire class of structured signals with a fixed measurement ensemble. However, despite significant results in various special cases, a general understanding of uniform recovery from non-linear observations is still missing. This paper develops a unified approach to this problem under the assumption of i.i.d. sub-Gaussian measurement vectors. Our main result shows that a simple least-squares estimator with any convex constraint can serve as a universal recovery strategy, which is outlier robust and does not require explicit knowledge of the underlying non-linearity. Based on empirical process theory, a key technical novelty is an approximative increment condition that can be implemented for all common types of non-linear models. This flexibility allows us to apply our approach to a variety of problems in non-linear compressed sensing and high-dimensional statistics, leading to several new and improved guarantees. Each of these applications is accompanied by a conceptually simple and systematic proof, which does not rely on any deeper properties of the observation model. On the other hand, known local stability properties can be incorporated into our framework in a plug-and-play manner, thereby implying near-optimal error bounds.
翻译:近些年来在量化压缩遥感和高维估计方面所取得的显著进展表明,在观测过程中出现强烈的非线性扭曲现象的情况下,信号恢复甚至是可行的。相关保障的一个重要特征是统一性,即回收成功是整类结构信号,具有固定的计量组合。然而,尽管在各种特殊情况下取得了显著成果,但对于非线性观测的统一恢复仍缺乏总体理解。本文件根据i.i.d.d. 亚高空测量矢量的假设,制定了解决这一问题的统一方法。我们的主要结果表明,一个简单最不平面的估算器,具有任何 convex限制,可以作为一种普遍的恢复战略,即,这种战略是超强的,并不要求明确了解基本的非线性。然而,根据经验过程理论,一个关键的技术新颖性是一个近似于一致的递增条件,可以对所有常见的非线性非线性模型采用。这种灵活性使我们能够在非线性压缩和高维度统计中运用我们的方法处理各种问题,导致几种近似且经过改进的精确性统计,导致几种近似和较精确的精确的回收战略,并不要求明确了解潜在的非线性,因此,每个系统性内置的内置的内置的内置的内置的内涵,可以同时以其他的内置的内置。