论文标题
从非线性观察中恢复统一信号的统一方法
A Unified Approach to Uniform Signal Recovery From Non-Linear Observations
论文作者
论文摘要
量化压缩感测和高维估计的最新进展表明,在观察过程中,在强烈的非线性畸变下,信号恢复甚至是可行的。相关保证的一个重要特征是统一性,即,恢复成功的整个结构化信号成功,并具有固定的测量集合。然而,尽管在各种特殊情况下取得了重大结果,但对从非线性观察的统一恢复的一般理解仍然缺失。本文在I.I.D.的假设下开发了一种统一的方法。次高斯测量向量。我们的主要结果表明,具有任何凸约限制的简单最小二乘估计器可以用作通用恢复策略,这是鲁棒的,并且不需要明确了解基本的非线性。基于经验过程理论,一个关键的技术新颖性是一个近似的增量条件,可以针对所有常见类型的非线性模型实现。这种灵活性使我们能够将方法应用于非线性压缩传感和高维统计的各种问题,从而导致了几种新的和改进的保证。这些应用程序中的每一个都伴随着一个概念上简单而系统的证明,该证明不依赖于观察模型的任何更深层次的属性。另一方面,可以以插件方式将已知的局部稳定性属性纳入我们的框架中,从而意味着几乎最佳的误差范围。
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.