Yang Kun, Tu Justin, Chen Tian
Department of Family Medicine and Public Health, University of California System, San Diego, California, USA.
PGY-2, Physical Medicine and Rehabilitation, University of Virginia Health System, Charlottesville, Virginia, USA.
Gen Psychiatr. 2019 Oct 17;32(5):e100148. doi: 10.1136/gpsych-2019-100148. eCollection 2019.
Linear regression is widely used in biomedical and psychosocial research. A critical assumption that is often overlooked is homoscedasticity. Unlike normality, the other assumption on data distribution, homoscedasticity is often taken for granted when fitting linear regression models. However, contrary to popular belief, this assumption actually has a bigger impact on validity of linear regression results than normality. In this report, we use Monte Carlo simulation studies to investigate and compare their effects on validity of inference.
线性回归在生物医学和社会心理研究中被广泛应用。一个经常被忽视的关键假设是同方差性。与数据分布的另一个假设——正态性不同,在拟合线性回归模型时,同方差性常常被视为理所当然。然而,与普遍看法相反,这个假设实际上对线性回归结果有效性的影响比正态性更大。在本报告中,我们使用蒙特卡罗模拟研究来调查和比较它们对推断有效性的影响。