Minimax Estimation of Linear Functions of Eigenvectors in the Face of Small Eigen-Gaps
Li, Gen, Cai, Changxiao, Gu, Yuantao, Poor, H. Vincent, Chen, Yuxin
Eigenvector perturbation analysis plays a vital role in various statistical 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 theory.
Apr-7-2021
- Country:
- North America > United States
- Rhode Island > Providence County
- Providence (0.04)
- New Jersey > Mercer County
- Princeton (0.04)
- Rhode Island > Providence County
- Europe > United Kingdom
- England > Cambridgeshire > Cambridge (0.04)
- Asia > China
- North America > United States
- Genre:
- Research Report (0.82)
- Technology: