ROBUSTNESS OF ADAPTIVE METHODS FOR UNBALANCED NON-NORMAL DATA: SKEWED NORMAL DATA AS AN EXAMPLE

Authors

  • Reema Mousa Abushrida Al al-Bayt University, Faculty of Science, Department of mathematics, Mafraq
  • Loai Mahmoud Al-Zoubi Al al-Bayt University, Faculty of Science, Department of mathematics, Mafraq
  • Amer Ibrahim Al-Omari Al al-Bayt University, Faculty of Science, Department of mathematics, Mafraq

Keywords:

Skew normal distribution, Adaptive strategies, Huber-White

Abstract

stimation of variances of the estimated regression coefficients and their estimators is based on fitting a linear regression model. One method for allowing for clustering in fitting a linear regression model is to use a linear mixed model with two levels. It is probably suitable to ignore clustering and use a single level model if the intra- lass correlation estimate is close to zero. In this paper, a two-stage survey is used to evaluate an adaptive strategy for estimating the variances of estimated regression coefficients. The strategy is based on testing the null hypothesis that random effect variance component is zero. If this hypothesis is accepted the estimated variances of estimated regression coefficients are extracted from the one-level linear model. Otherwise, the estimated variance is based on the linear mixed model, or, alternatively the Huber-White robust variance estimator is used. A simulation study is used to show that the adaptive approach provides reasonably correct inference in a simple case.

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Published

2023-05-01

How to Cite

Mousa Abushrida, R., Al-Zoubi, L. M., & Al-Omari, A. I. (2023). ROBUSTNESS OF ADAPTIVE METHODS FOR UNBALANCED NON-NORMAL DATA: SKEWED NORMAL DATA AS AN EXAMPLE. Investigación Operacional, 35(2). Retrieved from https://revistas.uh.cu/invoperacional/article/view/4719

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