Resampling-Based Inference Methods for Comparing Two Coefficients Alpha |
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Authors: | Markus Pauly Maria Umlauft Ali Ünlü |
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Affiliation: | 1.Institute of Statistics,Ulm University,Ulm,Germany;2.Technical University of Munich,Munich,Germany |
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Abstract: | The two-sample problem for Cronbach’s coefficient (alpha _C), as an estimate of test or composite score reliability, has attracted little attention compared to the extensive treatment of the one-sample case. It is necessary to compare the reliability of a test for different subgroups, for different tests or the short and long forms of a test. In this paper, we study statistical procedures of comparing two coefficients (alpha _{C,1}) and (alpha _{C,2}). The null hypothesis of interest is (H_0 : alpha _{C,1} = alpha _{C,2}), which we test against one-or two-sided alternatives. For this purpose, resampling-based permutation and bootstrap tests are proposed for two-group multivariate non-normal models under the general asymptotically distribution-free (ADF) setting. These statistical tests ensure a better control of the type-I error, in finite or very small sample sizes, when the state-of-affairs ADF large-sample test may fail to properly attain the nominal significance level. By proper choice of a studentized test statistic, the resampling tests are modified in order to be valid asymptotically even in non-exchangeable data frameworks. Moreover, extensions of this approach to other designs and reliability measures are discussed as well. Finally, the usefulness of the proposed resampling-based testing strategies is demonstrated in an extensive simulation study and illustrated by real data applications. |
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