In this paper, a goodness-of-fit test for normality based on the comparison of the theoretical and empirical distributions is proposed. Critical values are obtained via Monte Carlo for several sample sizes and different significance levels. We study and compare the power of forty selected normality tests for a wide collection of alternative distributions. The new proposal is compared to some traditionaltest statistics, such as Kolmogorov-Smirnov, Kuiper, Cramér-von Mises, Anderson-Darling, Pearson Chi-square, Shapiro-Wilk, Shapiro-Francia, Jarque-Bera, SJ, Robust Jarque-Bera, and also to entropy-based test statistics. From the simulation study results it is concluded that the best performance against asymmetric alternatives with support on ...
A common assumption of many statistical procedures during data analysis is that the data is normally...
This thesis study about goodness-of-fit testing approach for normality based on Bayesian method and ...
The empirical likelihood (EL) technique is a powerful nonparametric method with wide theoretical and...
In this paper, a goodness-of-fit test for normality based on the comparison of the theoretical and e...
The assumption of normality is very important because it is used in many statistical procedures such...
Mini Dissertation (MSc (Advanced Data Analytics))--University of Pretoria, 2023.The normality assump...
This paper presents a new test for normality which is based on a complete characterization of the no...
For testing normality we investigate the power of several tests, rst of all, the well known test of...
The paper studies four entropy tests of normality of real valued observations using four statistics ...
Since normal distributions are the most important ones in statistics, there are large number of test...
This paper presents a statistic for testing a complete sample for normality. The test statistic is d...
AbstractWe give the results of a comprehensive simulation study of the power properties of prominent...
Standard statistical procedures often require data to be normally distributed and the results of the...
Many statistical tests commonly used in practice assume that the distribution of the random observat...
Standard statistical procedures often require data to be normally distributed and the results of the...
A common assumption of many statistical procedures during data analysis is that the data is normally...
This thesis study about goodness-of-fit testing approach for normality based on Bayesian method and ...
The empirical likelihood (EL) technique is a powerful nonparametric method with wide theoretical and...
In this paper, a goodness-of-fit test for normality based on the comparison of the theoretical and e...
The assumption of normality is very important because it is used in many statistical procedures such...
Mini Dissertation (MSc (Advanced Data Analytics))--University of Pretoria, 2023.The normality assump...
This paper presents a new test for normality which is based on a complete characterization of the no...
For testing normality we investigate the power of several tests, rst of all, the well known test of...
The paper studies four entropy tests of normality of real valued observations using four statistics ...
Since normal distributions are the most important ones in statistics, there are large number of test...
This paper presents a statistic for testing a complete sample for normality. The test statistic is d...
AbstractWe give the results of a comprehensive simulation study of the power properties of prominent...
Standard statistical procedures often require data to be normally distributed and the results of the...
Many statistical tests commonly used in practice assume that the distribution of the random observat...
Standard statistical procedures often require data to be normally distributed and the results of the...
A common assumption of many statistical procedures during data analysis is that the data is normally...
This thesis study about goodness-of-fit testing approach for normality based on Bayesian method and ...
The empirical likelihood (EL) technique is a powerful nonparametric method with wide theoretical and...