empirical likelihood ratio based comparative study on tests for normality of residuals in linear models

C. Marange, Yongsong Qin
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引用次数: 1

Abstract

The application of goodness-of-fit (GoF) tests in linear regression modeling is a common practice in applied statistical sciences. For instance, in simple linear regression the assumption of normality of residuals is always necessary to test before making any further inferences. The growing popularity of the use of powerful and efficient empirical likelihood ratio (ELR) based GoF tests in checking for departures from normality in various continuous distributions can be of great use in checking for distributional assumptions of residuals in linear models. Motivated by the attractive properties of the ELR based GoF tests the researchers conducted an extensive Type I error rate assessment as well as a Monte Carlo power comparison of selected ELR GoF tests with well-known existing tests against symmetric and asymmetric alternative OLS and BLUS residuals. Under the simulated scenarios, all the studied tests have good control of Type I error rates. The Monte Carlo experiments revealed the superiority of the ELR GoF tests under certain alternatives of both the OLS and BLUS residuals. Our findings also demonstrated the superiority of OLS over BLUS residuals when one is testing for normality in simple linear regression models. A real data study further revealed the applicability of the ELR based GoF tests in testing normality of residuals in linear regression models.
基于经验似然比的线性模型残差正态性检验比较研究
拟合优度检验在线性回归建模中的应用是应用统计科学中的一种常见做法。例如,在简单的线性回归中,残差的正态性假设总是需要在进行任何进一步的推断之前进行测试。基于经验似然比(ELR)的GoF检验在检验各种连续分布中是否偏离正态性方面越来越受欢迎,这在检验线性模型中残差的分布假设方面有很大的用途。在基于ELR的GoF测试的诱人特性的激励下,研究人员对选定的ELR GoF测试与已知的针对对称和非对称替代OLS和BLUS残差的现有测试进行了广泛的I型错误率评估以及蒙特卡罗功率比较。在模拟场景下,所研究的所有测试都能很好地控制第一类错误率。蒙特卡罗实验表明,在OLS和BLUS残差的某些替代条件下,ELR GoF检验具有优越性。我们的研究结果还表明,在简单线性回归模型中检验正态性时,OLS优于BLUS残差。实际数据研究进一步揭示了基于ELR的GoF检验在检验线性回归模型残差正态性方面的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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