论文标题
ii。弱力矩假设下的高维估计:结构化恢复和基质估计
II. High Dimensional Estimation under Weak Moment Assumptions: Structured Recovery and Matrix Estimation
论文作者
论文摘要
本论文的目的是在仅存在有限数量的矩的测量值的假设下,开发有关高维结构信号恢复的新理论。在过去的十年中,高维恢复一直是由于著名的糖果作品Romberg和Tao的作品(例如[CRT06,CRT04])。那里的原始分析(以及此后的作品)需要强大的浓度参数(即受限的等轴测特性),这仅适用于具有轻尾分布的相当有限的测量类别。长期以来,人们一直认为,即使限制的等距类型条件不存在,高维恢复也是可能的,但是直到最近的作品[men14a,km15]提出了一种新的小球方法。在这两篇论文中,作者启动了有关正方形损失的一般经验风险最小化(ERM)问题的新分析框架,这是强大的,并且有可能允许重尾损失功能。本论文中的材料部分受[men14a]的启发,但心态不同:而不是直接分析现有的信号恢复的现有eRMS,很难避免强劲的矩假设,我们表明,在许多情况下,在许多情况下,通过仔细地重新设计ERM可以开始使用较小的信号恢复,而不是实现较小的信号恢复,而是可以实现较小的稳定性。
The purpose of this thesis is to develop new theories on high-dimensional structured signal recovery under a rather weak assumption on the measurements that only a finite number of moments exists. High-dimensional recovery has been one of the emerging topics in the last decade partly due to the celebrated work of Candes, Romberg and Tao (e.g. [CRT06, CRT04]). The original analysis there (and the works thereafter) necessitates a strong concentration argument (namely, the restricted isometry property), which only holds for a rather restricted class of measurements with light-tailed distributions. It had long been conjectured that high-dimensional recovery is possible even if restricted isometry type conditions do not hold, but the general theory was beyond the grasp until very recently, when the works [Men14a, KM15] propose a new small-ball method. In these two papers, the authors initiated a new analysis framework for general empirical risk minimization (ERM) problems with respect to the square loss, which is robust and can potentially allow heavy-tailed loss functions. The materials in this thesis are partly inspired by [Men14a], but are of a different mindset: rather than directly analyzing the existing ERMs for signal recovery for which it is difficult to avoid strong moment assumptions, we show that, in many circumstances, by carefully re-designing the ERMs to start with, one can still achieve the minimax optimal statistical rate of signal recovery with very high probability under much weaker assumptions than existing works.