Model and Variable Selection Procedures for Semiparametric Time Series Regression
Author(s) -
Risa Kato,
Takayuki Shiohama
Publication year - 2009
Publication title -
journal of probability and statistics
Language(s) - English
Resource type - Journals
eISSN - 1687-9538
pISSN - 1687-952X
DOI - 10.1155/2009/487194
Subject(s) - semiparametric regression , estimator , semiparametric model , feature selection , nonparametric statistics , model selection , parametric statistics , mathematics , series (stratigraphy) , inference , selection (genetic algorithm) , econometrics , regression analysis , time series , asymptotic distribution , nonparametric regression , mathematical optimization , computer science , statistics , machine learning , artificial intelligence , paleontology , biology
Semiparametric regression models are very useful for time series analysis. They facilitate the detection of features resulting from external interventions. The complexity of semiparametric models poses new challenges for issues of nonparametric and parametric inference and model selection that frequently arise from time series data analysis. In this paper, we propose penalized least squares estimators which can simultaneously select significant variables and estimate unknown parameters. An innovative class of variable selection procedure is proposed to select significant variables and basis functions in a semiparametric model. The asymptotic normality of the resulting estimators is established. Information criteria for model selection are also proposed. We illustrate the effectiveness of the proposed procedures with numerical simulations
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