Comparison of the procedures of Fleishman and Ramberg et al. for generating non-normal data in simulation studies

Simulation techniques must be able to generate the types of distributions most commonly encountered in real data, for example, non-normal distributions. Two recognized procedures for generating non-normal data are Fleishman's linear transformation method and the method proposed by Ramberg et al...

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Main Authors: Rebecca Bendayan, Jaime Arnau, María J. Blanca, Roser Bono
Format: Article
Language:English
Published: Servicio de Publicaciones 2014-01-01
Series:Anales de Psicología
Subjects:
Online Access:http://scielo.isciii.es/scielo.php?script=sci_arttext&pid=S0212-97282014000100039&lng=en&tlng=en
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spelling doaj-01f9e604b42b46eda2c0f9f348fa481e2020-11-24T22:32:46ZengServicio de PublicacionesAnales de Psicología0212-97282014-01-0130136437110.6018/analesps.30.1.135911S0212-97282014000100039Comparison of the procedures of Fleishman and Ramberg et al. for generating non-normal data in simulation studiesRebecca Bendayan0Jaime Arnau1María J. Blanca2Roser Bono3University of MalagaUniversity of BarcelonaUniversity of MalagaUniversity of BarcelonaSimulation techniques must be able to generate the types of distributions most commonly encountered in real data, for example, non-normal distributions. Two recognized procedures for generating non-normal data are Fleishman's linear transformation method and the method proposed by Ramberg et al. that is based on generalization of the Tukey lambda distribution. This study compares tríese procedures in terms of the extent to which the distributions they generate fit their respective theoretical models, and it also examines the number of simulations needed to achieve this fit. To this end, the paper considers, in addition to the normal distribution, a series of non-normal distributions that are commonly found in real data, and then analyses fit according to the extent to which normality is violated and the number of simulations performed. The results show that the two data generation procedures behave similarly. As the degree of contamination of the theoretical distribution increases, so does the number of simulations required to ensure a good fit to the generated data. The two procedures generate more accurate normal and non-normal distributions when at least 7000 simulations are performed, although when the degree of contamination is severe (with values of skewness and kurtosis of 2 and 6, respectively) it is advisable to perform 15000 simulations.http://scielo.isciii.es/scielo.php?script=sci_arttext&pid=S0212-97282014000100039&lng=en&tlng=enSimulaciónMonte Carlogeneradores de datosdatos no normalesnúmero de simulaciones
collection DOAJ
language English
format Article
sources DOAJ
author Rebecca Bendayan
Jaime Arnau
María J. Blanca
Roser Bono
spellingShingle Rebecca Bendayan
Jaime Arnau
María J. Blanca
Roser Bono
Comparison of the procedures of Fleishman and Ramberg et al. for generating non-normal data in simulation studies
Anales de Psicología
Simulación
Monte Carlo
generadores de datos
datos no normales
número de simulaciones
author_facet Rebecca Bendayan
Jaime Arnau
María J. Blanca
Roser Bono
author_sort Rebecca Bendayan
title Comparison of the procedures of Fleishman and Ramberg et al. for generating non-normal data in simulation studies
title_short Comparison of the procedures of Fleishman and Ramberg et al. for generating non-normal data in simulation studies
title_full Comparison of the procedures of Fleishman and Ramberg et al. for generating non-normal data in simulation studies
title_fullStr Comparison of the procedures of Fleishman and Ramberg et al. for generating non-normal data in simulation studies
title_full_unstemmed Comparison of the procedures of Fleishman and Ramberg et al. for generating non-normal data in simulation studies
title_sort comparison of the procedures of fleishman and ramberg et al. for generating non-normal data in simulation studies
publisher Servicio de Publicaciones
series Anales de Psicología
issn 0212-9728
publishDate 2014-01-01
description Simulation techniques must be able to generate the types of distributions most commonly encountered in real data, for example, non-normal distributions. Two recognized procedures for generating non-normal data are Fleishman's linear transformation method and the method proposed by Ramberg et al. that is based on generalization of the Tukey lambda distribution. This study compares tríese procedures in terms of the extent to which the distributions they generate fit their respective theoretical models, and it also examines the number of simulations needed to achieve this fit. To this end, the paper considers, in addition to the normal distribution, a series of non-normal distributions that are commonly found in real data, and then analyses fit according to the extent to which normality is violated and the number of simulations performed. The results show that the two data generation procedures behave similarly. As the degree of contamination of the theoretical distribution increases, so does the number of simulations required to ensure a good fit to the generated data. The two procedures generate more accurate normal and non-normal distributions when at least 7000 simulations are performed, although when the degree of contamination is severe (with values of skewness and kurtosis of 2 and 6, respectively) it is advisable to perform 15000 simulations.
topic Simulación
Monte Carlo
generadores de datos
datos no normales
número de simulaciones
url http://scielo.isciii.es/scielo.php?script=sci_arttext&pid=S0212-97282014000100039&lng=en&tlng=en
work_keys_str_mv AT rebeccabendayan comparisonoftheproceduresoffleishmanandrambergetalforgeneratingnonnormaldatainsimulationstudies
AT jaimearnau comparisonoftheproceduresoffleishmanandrambergetalforgeneratingnonnormaldatainsimulationstudies
AT mariajblanca comparisonoftheproceduresoffleishmanandrambergetalforgeneratingnonnormaldatainsimulationstudies
AT roserbono comparisonoftheproceduresoffleishmanandrambergetalforgeneratingnonnormaldatainsimulationstudies
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