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  1. Variables selection in observational and experimental studies
    Published: 2000
    Publisher:  SFB 475, Universität Dortmund, Dortmund

    This paper discusses whether differences in the data structure of observational and experimental studies should lead to different strategies for variable selection. On the one hand, it is argued that outliers in the predictor variables have to be... more

    ZBW - Leibniz-Informationszentrum Wirtschaft, Standort Kiel
    DS 35 (2000,22)
    No inter-library loan

     

    This paper discusses whether differences in the data structure of observational and experimental studies should lead to different strategies for variable selection. On the one hand, it is argued that outliers in the predictor variables have to be treated differently in the two kinds of studies. In experimental studies this results in philosophical problems with the applicability of cross validation. On the other hand, it is shown, however, that a well designed experiment might lead to a factor structure very appropriate for cross validation, namely a certain balance in the observations together with orthogonality of the factors. This might be the reason why in practice cross validation has proven to be a valuable tool for variable selection also in experimental studies. In contrast, however, it is shown that variables selection based on cross validation is not appropriate for saturated orthogonal designs. After this fundamental argumentation, we illustrate by a number of examples that the same methods for variable selection can be successfully applied in observational as well as experimental studies.

     

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    Content information
    Volltext (kostenfrei)
    Source: Union catalogues
    Language: English
    Media type: Book
    Format: Online
    Other identifier:
    hdl: 10419/77095
    Series: [Technical Report, SFB 475: Komplexitätsreduktion in Multivariaten Datenstrukturen, Universität Dortmund ; 2000,22]
    Subjects: variables selection; stepwise regression; cross validation; principal components; screening; optimization
    Scope: Online-Ressource (28 S.), graph. Darst.