二元分析
数学
二次方程
一般线性模型
线性回归
统计
多元统计
相互作用
线性模型
回归分析
贝叶斯多元线性回归
差异(会计)
计量经济学
回归
会计
业务
几何学
作者
Enno Siemsen,Aleda V. Roth,Pedro Oliveira
标识
DOI:10.1177/1094428109351241
摘要
This research analyzes the effects of common method variance (CMV) on parameter estimates in bivariate linear, multivariate linear, quadratic, and interaction regression models. The authors demonstrate that CMV can either inflate or deflate bivariate linear relationships, depending on the degree of symmetry with which CMV affects the observed measures. With respect to multivariate linear relationships, they show that common method bias generally decreases when additional independent variables suffering from CMV are included in a regression equation. Finally, they demonstrate that quadratic and interaction effects cannot be artifacts of CMV. On the contrary, both quadratic and interaction terms can be severely deflated through CMV, making them more difficult to detect through statistical means.
科研通智能强力驱动
Strongly Powered by AbleSci AI