A combined method based on kurtosis indexes for estimating p in non-linear Lp-norm regression

The Generalized Error Distribution (G.E.D.) is a very flexible family of symmetric density distributions, which are characterized by their shape parameter p linked to the Lp-norm estimators. In fact, under this errors assumption in the regression model the G.E.D. parameter p coincides with the p exp...

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Main Author: Massimiliano Giacalone
Format: Article
Language:English
Published: Elsevier 2020-01-01
Series:Sustainable Futures
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2666188820300010
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spelling doaj-823557cb83434f1abd17b305a2e5fcbd2021-03-22T08:43:55ZengElsevierSustainable Futures2666-18882020-01-012100008A combined method based on kurtosis indexes for estimating p in non-linear Lp-norm regressionMassimiliano Giacalone0Department of Economics and Statistics, University of Naples ''Federico II'', Viale Cinthia, Monte S. Angelo, 80126 Naples, Italy.The Generalized Error Distribution (G.E.D.) is a very flexible family of symmetric density distributions, which are characterized by their shape parameter p linked to the Lp-norm estimators. In fact, under this errors assumption in the regression model the G.E.D. parameter p coincides with the p exponent of the Lp-norm. In this paper, we examine the use of Lp-norm estimators in the framework of non-linear regression models assuming the G.E.D. as the errors distribution. More precisely, we introduce an exponential regression (Marković, & Borozan, 2015) and a new algorithm Lpmed consisting of two iterative procedures, one internal to estimate the regression parameters and another external for estimating p (the p exponent of the Lp-norm) based on two kurtosis indexes of the residuals distribution. In order to show the good results of the proposed method, an efficiency comparison of the new method, Lpmed, with other two well-known approaches as the maximum likelihood (Agrò, 1995) and the Money et al. (1982) method is performed. Our combined method shows better results asymptotically and, especially in presence of leptokurtic data, for the p parameter estimation. Finally an application on the Equitable and Sustainable Well-being (B.E.S) in the Italian context confirms the good properties of the proposed method.http://www.sciencedirect.com/science/article/pii/S2666188820300010Lp-norm estimatorsGeneralized error distributionAdaptive proceduresKurtosis indexesNon-linear regressionSustainability
collection DOAJ
language English
format Article
sources DOAJ
author Massimiliano Giacalone
spellingShingle Massimiliano Giacalone
A combined method based on kurtosis indexes for estimating p in non-linear Lp-norm regression
Sustainable Futures
Lp-norm estimators
Generalized error distribution
Adaptive procedures
Kurtosis indexes
Non-linear regression
Sustainability
author_facet Massimiliano Giacalone
author_sort Massimiliano Giacalone
title A combined method based on kurtosis indexes for estimating p in non-linear Lp-norm regression
title_short A combined method based on kurtosis indexes for estimating p in non-linear Lp-norm regression
title_full A combined method based on kurtosis indexes for estimating p in non-linear Lp-norm regression
title_fullStr A combined method based on kurtosis indexes for estimating p in non-linear Lp-norm regression
title_full_unstemmed A combined method based on kurtosis indexes for estimating p in non-linear Lp-norm regression
title_sort combined method based on kurtosis indexes for estimating p in non-linear lp-norm regression
publisher Elsevier
series Sustainable Futures
issn 2666-1888
publishDate 2020-01-01
description The Generalized Error Distribution (G.E.D.) is a very flexible family of symmetric density distributions, which are characterized by their shape parameter p linked to the Lp-norm estimators. In fact, under this errors assumption in the regression model the G.E.D. parameter p coincides with the p exponent of the Lp-norm. In this paper, we examine the use of Lp-norm estimators in the framework of non-linear regression models assuming the G.E.D. as the errors distribution. More precisely, we introduce an exponential regression (Marković, & Borozan, 2015) and a new algorithm Lpmed consisting of two iterative procedures, one internal to estimate the regression parameters and another external for estimating p (the p exponent of the Lp-norm) based on two kurtosis indexes of the residuals distribution. In order to show the good results of the proposed method, an efficiency comparison of the new method, Lpmed, with other two well-known approaches as the maximum likelihood (Agrò, 1995) and the Money et al. (1982) method is performed. Our combined method shows better results asymptotically and, especially in presence of leptokurtic data, for the p parameter estimation. Finally an application on the Equitable and Sustainable Well-being (B.E.S) in the Italian context confirms the good properties of the proposed method.
topic Lp-norm estimators
Generalized error distribution
Adaptive procedures
Kurtosis indexes
Non-linear regression
Sustainability
url http://www.sciencedirect.com/science/article/pii/S2666188820300010
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