The objective of the present work is to study the relations between the mean difference and the standard deviation with reference to the most common continuous theoretical distribution models. The continuous distribution models without shape parameters, those with only one shape parameter, and those with two shape parameters have been considered. The shape parameters encountered are inequality indexes, skewness indexes or kurtosis indexes. For the models without shape parameters the perfect equal ranking of the values of the two indexes have been verified. For the models with only one shape parameter it was seen that with variations in the shape parameter both indexes increase or decrease, so that the relation between them is growing. T...
In this paper the features of some distribution models used in the literature to depict income distr...
Abstract Background Dichotomisation of continuous data has statistical drawbacks such as loss of pow...
When the problem of estimating the parameters of a probability distribution is not easy because of t...
The aim of this paper is to examine the relations between the mean difference and the mean deviatio...
part from its use as a means to measure the variability of a series of observations, like the other...
A paper on Gini mean difference (Yitzhaki, 2003) shows the superiority of mean difference as a meas...
The functional specification of mean-standard deviation approach is examined under location and scal...
The aim of the paper is to deal with the Gini mean difference as a measure of the variability of som...
In 2007 Girone and Mazzitelli presented all the previous and some new results of the mean difference...
The calculation of the mean difference for the inverse normal distribution can be obtained by a tran...
Peacock JL, Sauzet O, Ewings SM, Kerry SM. Dichotomising continuous data while retaining statistical...
In designing a stochastic model for a particular modeling problem, an investigator will be vitally i...
Mean and median are both estimators of the central value of statistical distributions. For a given s...
Univariate continuous distributions are one of the fundamental components on which statistical model...
Sauzet O, Kleine M. Distributional estimates for the comparison of proportions of a dichotomized con...
In this paper the features of some distribution models used in the literature to depict income distr...
Abstract Background Dichotomisation of continuous data has statistical drawbacks such as loss of pow...
When the problem of estimating the parameters of a probability distribution is not easy because of t...
The aim of this paper is to examine the relations between the mean difference and the mean deviatio...
part from its use as a means to measure the variability of a series of observations, like the other...
A paper on Gini mean difference (Yitzhaki, 2003) shows the superiority of mean difference as a meas...
The functional specification of mean-standard deviation approach is examined under location and scal...
The aim of the paper is to deal with the Gini mean difference as a measure of the variability of som...
In 2007 Girone and Mazzitelli presented all the previous and some new results of the mean difference...
The calculation of the mean difference for the inverse normal distribution can be obtained by a tran...
Peacock JL, Sauzet O, Ewings SM, Kerry SM. Dichotomising continuous data while retaining statistical...
In designing a stochastic model for a particular modeling problem, an investigator will be vitally i...
Mean and median are both estimators of the central value of statistical distributions. For a given s...
Univariate continuous distributions are one of the fundamental components on which statistical model...
Sauzet O, Kleine M. Distributional estimates for the comparison of proportions of a dichotomized con...
In this paper the features of some distribution models used in the literature to depict income distr...
Abstract Background Dichotomisation of continuous data has statistical drawbacks such as loss of pow...
When the problem of estimating the parameters of a probability distribution is not easy because of t...