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Title:

Model selection strategies for identifying relevant covariates in homescedastic linear models

Document type:
Zeitschriftenaufsatz
Author(s):
Min, A.; Holzmann, H.; Czado, C.
Non-TUM Co-author(s):
nein
Cooperation:
-
Abstract:
A new method in two variations for the identification of most relevant covariates in linear models with homoscedastic errors is proposed. In contrast to many known selection criteria, the method is based on an interpretable scaled quantity. This quantity measures a maximal relative error one makes by selecting covariates from a given set of all available covariates. The proposed model selection procedures rely on asymptotic normality of test statistics, and therefore normality of the errors in t...     »
Intellectual Contribution:
Discipline-based Research
Journal title:
Computational Statistics and Data Analysis
Year:
2010
Journal volume:
54
Journal issue:
12
Pages contribution:
3194-3211
Reviewed:
ja
Language:
en
Status:
Erstveröffentlichung
Format:
Text
Key publication:
Nein
Peer reviewed:
Ja
International:
Ja
Book review:
Nein
Commissioned:
not commissioned
Professional Journal:
Nein
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