Confirmation, Correction and Improvement for Outlier Validation using Dummy Variables

Dummy variables can be used to detect, validate and measure the impact of outliers in data. This paper uses a model to evaluate the effectiveness of dummy variables in detecting outliers. While generally confirming some findings in the literature, the model refutes the presumption that the t˗stat...

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Main Author: Arzdar Kiraci
Format: Article
Language:English
Published: Econometric Research Association 2013-09-01
Series:International Econometric Review
Subjects:
Online Access:http://www.era.org.tr/makaleler/30050079.pdf
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spelling doaj-862d2985f19e4dd6855697ab346454ff2020-11-25T00:17:35ZengEconometric Research AssociationInternational Econometric Review1308-87931308-88152013-09-01524352Confirmation, Correction and Improvement for Outlier Validation using Dummy VariablesArzdar Kiraci0Siirt University, TurkeyDummy variables can be used to detect, validate and measure the impact of outliers in data. This paper uses a model to evaluate the effectiveness of dummy variables in detecting outliers. While generally confirming some findings in the literature, the model refutes the presumption that the t˗statistic or the F˗incremental statistic is enough to validate an observation as an outlier. In order to rectify this fallacy, this paper recommends an easily-calculable robust standardized residual statistic that is more compatible with the definition of outliers. The robust standardized residual statistic suggested herein is still used in many robust regression methods and is more effective than the t˗statistic or the F˗incremental statistic in validating outliers with dummy variables. The results of this study suggest some practical recommendations for dealing with outliers and improvements in maintaining the integrity of data. We recommend all previous studies using this statistics be revised in light of the findings presented in this paper.http://www.era.org.tr/makaleler/30050079.pdfDummy Variablet˗StatisticOutlierRobust Dummy StatisticRobust Standardized Residual
collection DOAJ
language English
format Article
sources DOAJ
author Arzdar Kiraci
spellingShingle Arzdar Kiraci
Confirmation, Correction and Improvement for Outlier Validation using Dummy Variables
International Econometric Review
Dummy Variable
t˗Statistic
Outlier
Robust Dummy Statistic
Robust Standardized Residual
author_facet Arzdar Kiraci
author_sort Arzdar Kiraci
title Confirmation, Correction and Improvement for Outlier Validation using Dummy Variables
title_short Confirmation, Correction and Improvement for Outlier Validation using Dummy Variables
title_full Confirmation, Correction and Improvement for Outlier Validation using Dummy Variables
title_fullStr Confirmation, Correction and Improvement for Outlier Validation using Dummy Variables
title_full_unstemmed Confirmation, Correction and Improvement for Outlier Validation using Dummy Variables
title_sort confirmation, correction and improvement for outlier validation using dummy variables
publisher Econometric Research Association
series International Econometric Review
issn 1308-8793
1308-8815
publishDate 2013-09-01
description Dummy variables can be used to detect, validate and measure the impact of outliers in data. This paper uses a model to evaluate the effectiveness of dummy variables in detecting outliers. While generally confirming some findings in the literature, the model refutes the presumption that the t˗statistic or the F˗incremental statistic is enough to validate an observation as an outlier. In order to rectify this fallacy, this paper recommends an easily-calculable robust standardized residual statistic that is more compatible with the definition of outliers. The robust standardized residual statistic suggested herein is still used in many robust regression methods and is more effective than the t˗statistic or the F˗incremental statistic in validating outliers with dummy variables. The results of this study suggest some practical recommendations for dealing with outliers and improvements in maintaining the integrity of data. We recommend all previous studies using this statistics be revised in light of the findings presented in this paper.
topic Dummy Variable
t˗Statistic
Outlier
Robust Dummy Statistic
Robust Standardized Residual
url http://www.era.org.tr/makaleler/30050079.pdf
work_keys_str_mv AT arzdarkiraci confirmationcorrectionandimprovementforoutliervalidationusingdummyvariables
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