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A Monte Carlo Stud/ of the Effects of Common Method Variance on Significance Testing and Parameter Bias in Hierarchical Linear Modeling

机译:分层线性建模中通用方法方差对重要性检验和参数偏差的影响的蒙特卡洛法则

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Despite that common method variance (CMV) is widely regarded as a serious threat to the validity of findings based on self-reports, there is insufficient research on its confounding influence. We extend Evans's (1985) pioneering work, and the more recent works by Ostroff, Kinicki, and Clark (2002) and Siemsen, Roth, and Oliveira (2010), to delineate the influence of CMV in a two-level hierarchical linear model based on self-report data. Our simulation results clearly show that in the absence of true effects, it is extremely unlikely for CMV to generate significant cross-level interactions. In fact, if a true cross-level interaction exists, CMV tends to lower the likelihood of its identification and erroneously underestimate the regression coefficient. Our simulation results also show that CMV may lead to a false significant cross-level main effect and overestimate the regression coefficient when no true effect exists. To reduce the probability of Type I errors, we show that raising the significance level to .01, the split sample strategy, and the addition of more CMV contaminated variables are effective in the vast majority of real-life situations and are more effective than increasing the number of groups or persons in each group. Both the split sample strategy and the addition of more CMV contaminated variables are also effective in reducing parameter bias when no true cross-level main effect exists. Trade-offs associated with different strategies are discussed.
机译:尽管普遍方法差异(CMV)被广泛认为是对基于自我报告的研究结果有效性的严重威胁,但对其混杂影响的研究尚不足。我们扩展了Evans(1985)的开创性工作,以及Ostroff,Kinicki和Clark(2002)以及Siemsen,Roth和Oliveira(2010)的最新著作,以基于两级分层线性模型描述了CMV的影响。关于自我报告数据。我们的仿真结果清楚地表明,在没有真实效果的情况下,CMV极不可能产生显着的跨级别交互作用。实际上,如果存在真正的跨级别交互,则CMV会降低其识别的可能性,并会错误地低估回归系数。我们的仿真结果还表明,在没有真实效果的情况下,CMV可能导致错误的重大跨级主效应,并高估了回归系数。为了减少I型错误的可能性,我们表明将显着性水平提高到0.01,拆分样本策略以及添加更多受CMV污染的变量在绝大多数现实生活中都是有效的,并且比提高显着性更有效。每个组中的组数或人数。当不存在真正的跨层主效应时,分割样本策略和添加更多受CMV污染的变量都可以有效减少参数偏差。讨论了与不同策略相关的取舍。

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