This paper considers testing for normality for correlated data. The proposed test procedure employs the skewness-kurtosis test statistic, but studentized by standard error estimators that are consistent under serial dependence of the observations. The standard error estimators are sample versions of the asymptotic quantities that do not incorporate any downweighting, and, hence, no smoothing parameter is needed. Therefore, the main feature of our proposed test is its simplicity, because it does not require the selection of any user-chosen parameter such as a smoothing number or the order of an approximating model.Publicad
International audienceExtensive literature exists on how to test for normality, especially for ident...
We derive explicit expressions for the correlation coefficients between the sample mean and the samp...
A new statistical procedure for testing normality is proposed. The Q statistic is derived as the rat...
This paper considers testing for normality for correlated data. The proposed test procedure employs ...
This paper considers testing for normality for correlated data. The proposed test procedure employs...
This paper considers testing for normality for correlated data. The proposed test procedure employs...
This paper considers testing for normality for correlated data. The proposed test procedure employs...
We present the sampling distributions for the coefficient of skewness, kurtosis, and a joint test of...
This paper considers testing for normality for time series data. In econometrics the typical testing...
Many statistical procedures rely on the assumption of normality in the dataset being analyzed. Howev...
A family of statistics for testing normality is presented which includes new tests for skewness, kur...
This paper presents a statistic for testing a complete sample for normality. The test statistic is d...
T-test is proposed as a parametric test to evaluate mean of population(s). Therefore, it is assumed...
International audienceExtensive literature exists on how to test for normality, especially for ident...
This work considers testing normality of time series in AR and ARMA processes. Firstly we investigat...
International audienceExtensive literature exists on how to test for normality, especially for ident...
We derive explicit expressions for the correlation coefficients between the sample mean and the samp...
A new statistical procedure for testing normality is proposed. The Q statistic is derived as the rat...
This paper considers testing for normality for correlated data. The proposed test procedure employs ...
This paper considers testing for normality for correlated data. The proposed test procedure employs...
This paper considers testing for normality for correlated data. The proposed test procedure employs...
This paper considers testing for normality for correlated data. The proposed test procedure employs...
We present the sampling distributions for the coefficient of skewness, kurtosis, and a joint test of...
This paper considers testing for normality for time series data. In econometrics the typical testing...
Many statistical procedures rely on the assumption of normality in the dataset being analyzed. Howev...
A family of statistics for testing normality is presented which includes new tests for skewness, kur...
This paper presents a statistic for testing a complete sample for normality. The test statistic is d...
T-test is proposed as a parametric test to evaluate mean of population(s). Therefore, it is assumed...
International audienceExtensive literature exists on how to test for normality, especially for ident...
This work considers testing normality of time series in AR and ARMA processes. Firstly we investigat...
International audienceExtensive literature exists on how to test for normality, especially for ident...
We derive explicit expressions for the correlation coefficients between the sample mean and the samp...
A new statistical procedure for testing normality is proposed. The Q statistic is derived as the rat...