Title :
Parameter estimation based on stacked regression and evolutionary algorithms
Author :
Hong, X. ; Billings, S.A.
Author_Institution :
Dept. of Autom. Control & Syst. Eng., Sheffield Univ., UK
fDate :
9/1/1999 12:00:00 AM
Abstract :
A new parameter-estimation algorithm, which minimises the cross-validated prediction error for linear-in-the-parameter models, is proposed, based on stacked regression and an evolutionary algorithm. It is initially shown that cross-validation is very important for prediction in linear-in-the-parameter models using a criterion called the mean dispersion error (MDE). Stacked regression, which can be regarded as a sophisticated type of cross-validation, is then introduced based on an evolutionary algorithm, to produce a new parameter-estimation algorithm, which preserves the parsimony of a concise model structure that is determined using the forward orthogonal least-squares (OLS) algorithm. The PRESS prediction errors are used for cross-validation, and the sunspot and Canadian lynx time series are used to demonstrate the new algorithms
Keywords :
evolutionary computation; least squares approximations; minimisation; parameter estimation; statistical analysis; Canadian lynx time series; MDE; OLS algorithm; PRESS prediction errors; concise model structure; cross-validated prediction error minimisation; cross-validation; evolutionary algorithms; forward orthogonal least-squares algorithm; linear-in-the-parameter models; mean dispersion error; parameter estimation; parsimony; stacked regression; sunspot time series;
Journal_Title :
Control Theory and Applications, IEE Proceedings -
DOI :
10.1049/ip-cta:19990505