Asymptotic Theory for Regularized System Identification Part I: Empirical Bayes Hyper-parameter Estimator

09/25/2022
by   Yue Ju, et al.
0

Regularized system identification is the major advance in system identification in the last decade. Although many promising results have been achieved, it is far from complete and there are still many key problems to be solved. One of them is the asymptotic theory, which is about convergence properties of the model estimators as the sample size goes to infinity. The existing related results for regularized system identification are about the almost sure convergence of various hyper-parameter estimators. A common problem of those results is that they do not contain information on the factors that affect the convergence properties of those hyper-parameter estimators, e.g., the regression matrix. In this paper, we tackle problems of this kind for the regularized finite impulse response model estimation with the empirical Bayes (EB) hyper-parameter estimator and filtered white noise input. In order to expose and find those factors, we study the convergence in distribution of the EB hyper-parameter estimator, and the asymptotic distribution of its corresponding model estimator. For illustration, we run Monte Carlo simulations to show the efficacy of our obtained theoretical results.

READ FULL TEXT

page 1

page 16

research
12/20/2021

Tutorial on Asymptotic Properties of Regularized Least Squares Estimator for Finite Impulse Response Model

In this paper, we give a tutorial on asymptotic properties of the Least ...
research
03/30/2020

On Effects of Condition Number of Regression Matrix upon Hyper-parameter Estimators for Kernel-based Regularization Methods

In this paper, we focus on the influences of the condition number of the...
research
03/30/2020

Supplementary Material for CDC Submission No. 1461

In this paper, we focus on the influences of the condition number of the...
research
02/18/2023

Clustered Covariate Regression

High covariate dimensionality is an increasingly occurrent phenomenon in...
research
01/13/2022

Binary response model with many weak instruments

This paper considers an endogenous binary response model with many weak ...
research
01/31/2018

Noise contrastive estimation: asymptotics, comparison with MC-MLE

A statistical model is said to be un-normalised when its likelihood func...

Please sign up or login with your details

Forgot password? Click here to reset