Minimax Estimation of Linear Functions of Eigenvectors in the Face of Small Eigen-Gaps

IF 2.9 3区 计算机科学 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS IEEE Transactions on Information Theory Pub Date : 2024-12-11 DOI:10.1109/TIT.2024.3514795
Gen Li;Changxiao Cai;H. Vincent Poor;Yuxin Chen
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Abstract

Eigenvector perturbation analysis plays a vital role in various data science applications. A large body of prior works, however, focused on establishing $\ell _{2}$ eigenvector perturbation bounds, which are often highly inadequate in addressing tasks that rely on fine-grained behavior of an eigenvector. This paper makes progress on this by studying the perturbation of linear functions of an unknown eigenvector. Focusing on two fundamental problems — matrix denoising and principal component analysis — in the presence of Gaussian noise, we develop a suite of statistical theory that characterizes the perturbation of arbitrary linear functions of an unknown eigenvector. In order to mitigate a non-negligible bias issue inherent to the natural “plug-in” estimator, we develop de-biased estimators that (1) achieve minimax lower bounds for a family of scenarios (modulo some logarithmic factor), and (2) can be computed in a data-driven manner without sample splitting. Noteworthily, the proposed estimators are nearly minimax optimal even when the associated eigen-gap is substantially smaller than what is required in prior statistical theory.
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小特征间隙下特征向量线性函数的极大极小估计
特征向量摄动分析在各种数据科学应用中起着至关重要的作用。然而,大量先前的工作集中在建立特征向量扰动边界上,这在解决依赖于特征向量的细粒度行为的任务时往往是非常不足的。本文通过研究未知特征向量的线性函数的摄动,在这方面取得了进展。聚焦于两个基本问题-矩阵去噪和主成分分析-在高斯噪声的存在下,我们开发了一套统计理论来表征未知特征向量的任意线性函数的扰动。为了减轻自然“插件”估计器固有的不可忽略的偏差问题,我们开发了去偏差估计器(1)实现一系列场景(对某些对数因子取模)的极大极小下界,并且(2)可以以数据驱动的方式计算而无需样本分裂。值得注意的是,即使相关的特征间隙大大小于先前统计理论所要求的,所提出的估计量也几乎是最小最大最优的。
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来源期刊
IEEE Transactions on Information Theory
IEEE Transactions on Information Theory 工程技术-工程:电子与电气
CiteScore
5.70
自引率
20.00%
发文量
514
审稿时长
12 months
期刊介绍: The IEEE Transactions on Information Theory is a journal that publishes theoretical and experimental papers concerned with the transmission, processing, and utilization of information. The boundaries of acceptable subject matter are intentionally not sharply delimited. Rather, it is hoped that as the focus of research activity changes, a flexible policy will permit this Transactions to follow suit. Current appropriate topics are best reflected by recent Tables of Contents; they are summarized in the titles of editorial areas that appear on the inside front cover.
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