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Open AccessArticle10.59139/ps.2013.04.3

Nieklasyczne procedury testowań wielokrotnych

Sabina Denkowska-2013-12-31-Przegląd Statystyczny Statistical Review

TL;DRAbstract

The range of applications of classical multiple testing procedures is limited due to model assumptions, and in many cases classic solutions are non-existent. In such situations non-classical multiple testing procedures allow to control the effect of multiple testing. Although they are popular for computational simplicity and a wide range of applications, marginal multiple testing procedures do not take into account joint distribution of test statistics, which make them more conservative than joint multiple testing procedures. The range of applications of joint procedures introduced by Westfall and Young (1993) is limited due to the subset pivotality requirement. Thus, joint multiple testing procedures suggested by Dudoit and van der Laan (2008) seem very promising. A wide range of applications, the possibility of choosing the Type I error rate and easily accessible software (MTP procedure is implemented in R multtest package) are their obvious advantages. Unfortunately, the results of

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The range of applications of classical multiple testing procedures is limited due to model assumptions, and in many cases classic solutions are non-existent. In such situations non-classical multiple testing procedures allow to control the effect of multiple testing. Although they are popular for computational simplicity and a wide range of applications, marginal multiple testing procedures do not take into account joint distribution of test statistics, which make them more conservative than joint multiple testing procedures. The range of applications of joint procedures introduced by Westfall and Young (1993) is limited due to the subset pivotality requirement. Thus, joint multiple testing procedures suggested by Dudoit and van der Laan (2008) seem very promising. A wide range of applications, the possibility of choosing the Type I error rate and easily accessible software (MTP procedure is implemented in R multtest package) are their obvious advantages. Unfortunately, the results of

Keywords

Computer scienceRange (aeronautics)Multiple comparisons problemJoint (building)Joint probability distributionSimplicityAlgorithmStatistics

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