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Conditional assessment of the impact of a Hausman pretest on confidence intervals. (English) Zbl 1528.62084

Summary: In the analysis of clustered and longitudinal data, which includes a covariate that varies both between and within clusters, a Hausman pretest is commonly used to decide whether subsequent inference is made using the linear random intercept model or the fixed effects model. We assess the effect of this pretest on the coverage probability and expected length of a confidence interval for the slope, conditional on the observed values of the covariate. This assessment has the advantages that it (i) relates to the values of this covariate at hand, (ii) is valid irrespective of how this covariate is generated, (iii) uses exact finite sample results, and (iv) results in an assessment that is determined by the values of this covariate and only two unknown parameters. For two real data sets, our conditional analysis shows that the confidence interval constructed after a Hausman pretest should not be used.
{© 2017 The Authors. Statistica Neerlandica © 2017 VVS.}

MSC:

62P20 Applications of statistics to economics
62F25 Parametric tolerance and confidence regions

Software:

SAS

References:

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