Establishing that there is no compelling evidence that some population is not normally distributed is fundamental to many statistical inferences, and numerous approaches to testing the null hypothesis of normality have been proposed. Fundamentally, the power of a test depends on which specific deviation from normality may be presented in a distribution. Knowledge of the potential nature of deviation from normality should reasonably guide the researcher's selection of testing for non-normality. In most settings, little is known aside from the data available for analysis, so that selection of a test based on general applicability is typically necessary. This research proposes and reports the power of two new tests of normality. One of the new...
In this paper, a goodness-of-fit test for normality based on the comparison of the theoretical and e...
T-test is proposed as a parametric test to evaluate mean of population(s). Therefore, it is assumed...
Statistical inference in the form of hypothesis tests and confidence intervals often assumes that th...
A new statistical procedure for testing normality is proposed. The Q statistic is derived as the rat...
We derive explicit expressions for the correlation coefficients between the sample mean and the samp...
This paper presents a statistic for testing a complete sample for normality. The test statistic is d...
This paper presents a new test for normality which is based on a complete characterization of the no...
A family of statistics for testing normality is presented which includes new tests for skewness, kur...
Abstract: Problem statement: Most of the statistical procedures heavily depend on normality assumpti...
If we know the statistics of central tendency and dispersion, we still cannot nature a complete desi...
Problem statement: Most of the statistical procedures heavily depend on normality assumption of obse...
In many statistical analyses, data need to be approximately normal or normally distributed.The kalmo...
In this paper, a goodness-of-fit test for normality based on the comparison of the theoretical and e...
Tests for univariate normality, some of them not included in previous comparisons, are com-pared acc...
In this paper, a goodness-of-fit test for normality based on the comparison of the theoretical and e...
In this paper, a goodness-of-fit test for normality based on the comparison of the theoretical and e...
T-test is proposed as a parametric test to evaluate mean of population(s). Therefore, it is assumed...
Statistical inference in the form of hypothesis tests and confidence intervals often assumes that th...
A new statistical procedure for testing normality is proposed. The Q statistic is derived as the rat...
We derive explicit expressions for the correlation coefficients between the sample mean and the samp...
This paper presents a statistic for testing a complete sample for normality. The test statistic is d...
This paper presents a new test for normality which is based on a complete characterization of the no...
A family of statistics for testing normality is presented which includes new tests for skewness, kur...
Abstract: Problem statement: Most of the statistical procedures heavily depend on normality assumpti...
If we know the statistics of central tendency and dispersion, we still cannot nature a complete desi...
Problem statement: Most of the statistical procedures heavily depend on normality assumption of obse...
In many statistical analyses, data need to be approximately normal or normally distributed.The kalmo...
In this paper, a goodness-of-fit test for normality based on the comparison of the theoretical and e...
Tests for univariate normality, some of them not included in previous comparisons, are com-pared acc...
In this paper, a goodness-of-fit test for normality based on the comparison of the theoretical and e...
In this paper, a goodness-of-fit test for normality based on the comparison of the theoretical and e...
T-test is proposed as a parametric test to evaluate mean of population(s). Therefore, it is assumed...
Statistical inference in the form of hypothesis tests and confidence intervals often assumes that th...