Test of Normality Against Generalized Exponential Power Alternatives |
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Authors: | Alain Desgagné Alexandre Leblanc |
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Affiliation: | 1. Département de Mathématiques , Université du Québec à Montréal , Montreal , Québec , Canada;2. Department of Statistics , University of Manitoba , Manitoba , Canada |
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Abstract: | The family of symmetric generalized exponential power (GEP) densities offers a wide range of tail behaviors, which may be exponential, polynomial, and/or logarithmic. In this article, a test of normality based on Rao's score statistic and this family of GEP alternatives is proposed. This test is tailored to detect departures from normality in the tails of the distribution. The main interest of this approach is that it provides a test with a large family of symmetric alternatives having non-normal tails. In addition, the test's statistic consists of a combination of three quantities that can be interpreted as new measures of tail thickness. In a Monte-Carlo simulation study, the proposed test is shown to perform well in terms of power when compared to its competitors. |
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Keywords: | Generalized exponential power Rao's score test Symmetric distributions Tail behavior Test of normality |
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