
This study investigated the performance of simultaneous confidence intervals (SCIs) to differentiate the means of multiple normal population distributions with known coefficients of variation (CVs). The researchers aim to find the means of several normal distributions with known coefficients of variation, SCIMOVER, SCIs, and SCIk, which are extended to k populations. The authors constructed SCIs for the difference between multiple normal means with known coefficients of variation. There are three approaches: the method of variance estimates recovery approach (MOVER), and two central limit theorem approaches (CLT). A Monte Carlo simulation was used to evaluate the performance of the coverage probabilities and expected lengths of the methods. The simulation results indicate that the MOVER approach is more desirable than the CLT approaches in terms of the coverage probability. The performance of the proposed approaches is also compared using an example with real data. Moreover, the coverage probability results for SCIMOVER were over the nominal level of 0.95, indicating that it is more stable than SCIs and SCIk and was thus more appropriate for use in this scenario. Finally, the researchers suggest using the MOVER approach for constructing the SCIs to determine the variation to achieve the best solution in related fields in the near future. Doi: 10.28991/ESJ-2022-06-04-04 Full Text: PDF
normal distribution, Statistics and Probability, simultaneous confidence interval, Coefficient of variation, Population, Skew Distributions, Astrophysics, approach (mover), coefficient of variation., Coverage probability, Methods for Handling Missing Data in Statistical Analysis, Variance (accounting), Sociology, Skew Distributions and Applications in Statistics, Accounting, FOS: Mathematics, T1-995, Business, Technology (General), Demography, H1-99, Multiple Testing, Simulation Studies, method of variance estimates recovery, Physics, Confidence interval, Statistics, Mixed-Effects Models, central limit theorem approach (clt), FOS: Sociology, Social sciences (General), Monte Carlo method, Physical Sciences, Variation (astronomy), Multivariate Normality, Normal distribution, Mathematics, Statistical Methods in Clinical Trials and Drug Development
normal distribution, Statistics and Probability, simultaneous confidence interval, Coefficient of variation, Population, Skew Distributions, Astrophysics, approach (mover), coefficient of variation., Coverage probability, Methods for Handling Missing Data in Statistical Analysis, Variance (accounting), Sociology, Skew Distributions and Applications in Statistics, Accounting, FOS: Mathematics, T1-995, Business, Technology (General), Demography, H1-99, Multiple Testing, Simulation Studies, method of variance estimates recovery, Physics, Confidence interval, Statistics, Mixed-Effects Models, central limit theorem approach (clt), FOS: Sociology, Social sciences (General), Monte Carlo method, Physical Sciences, Variation (astronomy), Multivariate Normality, Normal distribution, Mathematics, Statistical Methods in Clinical Trials and Drug Development
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