The assumption of normality is often not fulfilled, this causes the estimation of the resulting parameters to be less efficient. The problem with assuming that normality is not satisfied can be overcome by resampling. The use of resampling allows data to be applied free of distributional assumptions. In this study, a research simulation was carried out by applying Jackknife resampling and Double Jackknife resampling in path analysis with the assumption that the normality of the residuals was not fulfilled and the number of resampling was set at 100 with the degree of closeness level of relationship between variables consisting of low closeness, medium closeness, and high closeness. Based on the simulation results, resampling with a power of...
This paper is concerned with the application of jackknife methods as a means of bias reduction in th...
ABSTRACT: The paper introduces two jackknife estimators of the signal. The mean square errors of the...
In random-effects models, hierarchical linear models, or multilevel models, it is typically assumed ...
In practice, the assumptions of normality are often not met, this causes the estimation of the resul...
In practice, the assumptions of normality are often not met, this causes the estimation of the resul...
Pada praktiknya asumsi normalitas sisaan seringkali tidak terpenuhi, hal ini menyebabkan pendugaan p...
Quenouille has developed a procedure, later termed the jackknife by Tukey, for reducing the bias of ...
Includes bibliographical references.Many important estimators in statistics have the property that t...
The jackknife method, a resampling technique, has been widely used for statistical tests for years. ...
INDONESIA: Metode Bootstrap dan Jackknife merupakan dua metode yang digunakan untuk mengestimasi ...
This paper considers the specification and performance of jackknife estimators of the autoregressive...
Abstract: In this paper, the hierarchical ways for building a regression model by using bootstrap an...
We compared general behaviour trends of resampling methods (bootstrap, bootstrap with Poisson distri...
This paper considers the specification and performance of jackknife estimators of the autoregressive...
Three re-sampling techniques are used to estimate the survival probabilities from an exponential lif...
This paper is concerned with the application of jackknife methods as a means of bias reduction in th...
ABSTRACT: The paper introduces two jackknife estimators of the signal. The mean square errors of the...
In random-effects models, hierarchical linear models, or multilevel models, it is typically assumed ...
In practice, the assumptions of normality are often not met, this causes the estimation of the resul...
In practice, the assumptions of normality are often not met, this causes the estimation of the resul...
Pada praktiknya asumsi normalitas sisaan seringkali tidak terpenuhi, hal ini menyebabkan pendugaan p...
Quenouille has developed a procedure, later termed the jackknife by Tukey, for reducing the bias of ...
Includes bibliographical references.Many important estimators in statistics have the property that t...
The jackknife method, a resampling technique, has been widely used for statistical tests for years. ...
INDONESIA: Metode Bootstrap dan Jackknife merupakan dua metode yang digunakan untuk mengestimasi ...
This paper considers the specification and performance of jackknife estimators of the autoregressive...
Abstract: In this paper, the hierarchical ways for building a regression model by using bootstrap an...
We compared general behaviour trends of resampling methods (bootstrap, bootstrap with Poisson distri...
This paper considers the specification and performance of jackknife estimators of the autoregressive...
Three re-sampling techniques are used to estimate the survival probabilities from an exponential lif...
This paper is concerned with the application of jackknife methods as a means of bias reduction in th...
ABSTRACT: The paper introduces two jackknife estimators of the signal. The mean square errors of the...
In random-effects models, hierarchical linear models, or multilevel models, it is typically assumed ...