System Identification via Nuclear Norm Regularization

03/30/2022
by   Yue Sun, et al.
0

This paper studies the problem of identifying low-order linear systems via Hankel nuclear norm regularization. Hankel regularization encourages the low-rankness of the Hankel matrix, which maps to the low-orderness of the system. We provide novel statistical analysis for this regularization and carefully contrast it with the unregularized ordinary least-squares (OLS) estimator. Our analysis leads to new bounds on estimating the impulse response and the Hankel matrix associated with the linear system. We first design an input excitation and show that Hankel regularization enables one to recover the system using optimal number of observations in the true system order and achieve strong statistical estimation rates. Surprisingly, we demonstrate that the input design indeed matters, by showing that intuitive choices such as i.i.d. Gaussian input leads to provably sub-optimal sample complexity. To better understand the benefits of regularization, we also revisit the OLS estimator. Besides refining existing bounds, we experimentally identify when regularized approach improves over OLS: (1) For low-order systems with slow impulse-response decay, OLS method performs poorly in terms of sample complexity, (2) Hankel matrix returned by regularization has a more clear singular value gap that ease identification of the system order, (3) Hankel regularization is less sensitive to hyperparameter choice. Finally, we establish model selection guarantees through a joint train-validation procedure where we tune the regularization parameter for near-optimal estimation.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/12/2018

Finite sample performance of linear least squares estimation

Linear Least Squares is a very well known technique for parameter estima...
research
05/09/2015

Estimation with Norm Regularization

Analysis of non-asymptotic estimation error and structured statistical r...
research
12/20/2019

High-Dimensional Dynamic Systems Identification with Additional Constraints

This note presents a unified analysis of the identification of dynamical...
research
02/03/2022

Efficient learning of hidden state LTI state space models of unknown order

The aim of this paper is to address two related estimation problems aris...
research
09/29/2014

Bayesian and regularization approaches to multivariable linear system identification: the role of rank penalties

Recent developments in linear system identification have proposed the us...
research
05/21/2018

Effective Dimension of Exp-concave Optimization

We investigate the role of the effective (a.k.a. statistical) dimension ...
research
08/12/2015

Maximum Entropy Vector Kernels for MIMO system identification

Recent contributions have framed linear system identification as a nonpa...

Please sign up or login with your details

Forgot password? Click here to reset