Consistency of an Information Criterion for High-Dimensional Multivariate Regression

Consistency of an Information Criterion for High-Dimensional Multivariate Regression - SpringerBriefs in Statistics

1st ed. 2017

Paperback (23 Jul 2024)

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Publisher's Synopsis

This is the first book on an evaluation of (weak) consistency of an information criterion for variable selection in high-dimensional multivariate linear regression models by using the high-dimensional asymptotic framework. It is an asymptotic framework such that the sample size n and the dimension of response variables vector p are approaching ∞ simultaneously under a condition that p/n goes to a constant included in [0,1).Most statistical textbooks evaluate consistency of an information criterion by using the large-sample asymptotic framework such that n goes to ∞ under the fixed p. The evaluation of consistency of an information criterion from the high-dimensional asymptotic framework provides new knowledge to us, e.g., Akaike's information criterion (AIC) sometimes becomes consistent under the high-dimensional asymptotic framework although it never has a consistency under the large-sample asymptotic framework; and Bayesian information criterion (BIC) sometimes becomes inconsistent under the high-dimensional asymptotic framework although it is always consistent under the large-sample asymptotic framework. The knowledge may help to choose an information criterion to be used for high-dimensional data analysis, which has been attracting the attention of many researchers.

Book information

ISBN: 9784431557746
Publisher: Springer Japan
Imprint: Springer
Pub date:
Edition: 1st ed. 2017
DEWEY: 519.536
DEWEY edition: 23
Language: English
Number of pages: 60
Weight: -1g
Height: 235mm
Width: 155mm