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Bootstrap adjustments of signed scoring rule root statistics
Authors:V. Mameli  M. Musio  L. Ventura
Affiliation:1. Department of Environmental Sciences, Informatics and Statistics, Ca'Foscari University of Venice, Italy;2. Department of Mathematics and Computer Science, University of Cagliari, Italy;3. Department of Statistical Sciences, University of Padova, Italy
Abstract:Scoring rules give rise to methods for statistical inference and are useful tools to achieve robustness or reduce computations. Scoring rule inference is generally performed through first-order approximations to the distribution of the scoring rule estimator or of the ratio-type statistic. In order to improve the accuracy of first-order methods even in simple models, we propose bootstrap adjustments of signed scoring rule root statistics for a scalar parameter of interest in presence of nuisance parameters. The method relies on the parametric bootstrap approach that avoids onerous calculations specific of analytical adjustments. Numerical examples illustrate the accuracy of the proposed method.
Keywords:Asymptotic expansions  Higher-order inference  Parametric bootstrap  Regression models  Robustness  Tsallis scoring rule
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