多重共线性
方差膨胀系数
共线性
统计
计量经济学
差异(会计)
回归
数学
I类和II类错误
回归分析
蒙特卡罗方法
经济
会计
作者
Matthew Ryan Lavery,Parul Acharya,Stephen A. Sivo,Lihua Xu
标识
DOI:10.1080/03610918.2017.1371750
摘要
The present Monte Carlo simulation study adds to the literature by analyzing parameter bias, rates of Type I and Type II error, and variance inflation factor (VIF) values produced under various multicollinearity conditions by multiple regressions with two, four, and six predictors. Findings indicate multicollinearity is unrelated to Type I error, but increases Type II error. Investigation of bias suggests that multicollinearity increases the variability in parameter bias, while leading to overall underestimation of parameters. Collinearity also increases VIF. In the case of all diagnostics however, increasing the number of predictors interacts with multicollinearity to compound observed problems.
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