New Graphical Methods and Test Statistics for Testing Composite Normality

Several graphical methods for testing univariate composite normality from an i.i.d. sample are presented. They are endowed with correct simultaneous error bounds and yield size-correct tests. As all are based on the empirical CDF, they are also consistent for all alternatives. For one test, called t...

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Main Author: Marc S. Paolella
Format: Article
Language:English
Published: MDPI AG 2015-07-01
Series:Econometrics
Subjects:
Online Access:http://www.mdpi.com/2225-1146/3/3/532
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spelling doaj-1972c3c1717e41e388e9701b4ec2e9a12020-11-24T22:02:19ZengMDPI AGEconometrics2225-11462015-07-013353256010.3390/econometrics3030532econometrics3030532New Graphical Methods and Test Statistics for Testing Composite NormalityMarc S. Paolella0Department of Banking and Finance, University of Zurich, Plattenstrasse 14, 8032 Zurich, SwitzerlandSeveral graphical methods for testing univariate composite normality from an i.i.d. sample are presented. They are endowed with correct simultaneous error bounds and yield size-correct tests. As all are based on the empirical CDF, they are also consistent for all alternatives. For one test, called the modified stabilized probability test, or MSP, a highly simplified computational method is derived, which delivers the test statistic and also a highly accurate p-value approximation, essentially instantaneously. The MSP test is demonstrated to have higher power against asymmetric alternatives than the well-known and powerful Jarque-Bera test. A further size-correct test, based on combining two test statistics, is shown to have yet higher power. The methodology employed is fully general and can be applied to any i.i.d. univariate continuous distribution setting.http://www.mdpi.com/2225-1146/3/3/532calibration for simultaneitycombined testsdistribution testingP-P plotQ-Q plotsimultaneous null bands
collection DOAJ
language English
format Article
sources DOAJ
author Marc S. Paolella
spellingShingle Marc S. Paolella
New Graphical Methods and Test Statistics for Testing Composite Normality
Econometrics
calibration for simultaneity
combined tests
distribution testing
P-P plot
Q-Q plot
simultaneous null bands
author_facet Marc S. Paolella
author_sort Marc S. Paolella
title New Graphical Methods and Test Statistics for Testing Composite Normality
title_short New Graphical Methods and Test Statistics for Testing Composite Normality
title_full New Graphical Methods and Test Statistics for Testing Composite Normality
title_fullStr New Graphical Methods and Test Statistics for Testing Composite Normality
title_full_unstemmed New Graphical Methods and Test Statistics for Testing Composite Normality
title_sort new graphical methods and test statistics for testing composite normality
publisher MDPI AG
series Econometrics
issn 2225-1146
publishDate 2015-07-01
description Several graphical methods for testing univariate composite normality from an i.i.d. sample are presented. They are endowed with correct simultaneous error bounds and yield size-correct tests. As all are based on the empirical CDF, they are also consistent for all alternatives. For one test, called the modified stabilized probability test, or MSP, a highly simplified computational method is derived, which delivers the test statistic and also a highly accurate p-value approximation, essentially instantaneously. The MSP test is demonstrated to have higher power against asymmetric alternatives than the well-known and powerful Jarque-Bera test. A further size-correct test, based on combining two test statistics, is shown to have yet higher power. The methodology employed is fully general and can be applied to any i.i.d. univariate continuous distribution setting.
topic calibration for simultaneity
combined tests
distribution testing
P-P plot
Q-Q plot
simultaneous null bands
url http://www.mdpi.com/2225-1146/3/3/532
work_keys_str_mv AT marcspaolella newgraphicalmethodsandteststatisticsfortestingcompositenormality
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