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首页> 外文期刊>The British journal of mathematical and statistical psychology >Analysing multisource feedback with multilevel structural equation models: Pitfalls and recommendations from a simulation study
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Analysing multisource feedback with multilevel structural equation models: Pitfalls and recommendations from a simulation study

机译:用多级结构方程模型分析多源反馈:模拟研究中的陷阱与建议

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摘要

When multisource feedback instruments, for example, 360-degree feedback tools, are validated, multilevel structural equation models are the method of choice to quantify the amount of reliability as well as convergent and discriminant validity. A non-standard multilevel structural equation model that incorporates self-ratings (level-2 variables) and others' ratings from different additional perspectives (level-1 variables), for example, peers and subordinates, has recently been presented. In a Monte Carlo simulation study, we determine the minimal required sample sizes for this model. Model parameters are accurately estimated even with the smallest simulated sample size of 100 self-ratings and two ratings of peers and of subordinates. The precise estimation of standard errors necessitates sample sizes of 400 self-ratings or at least four ratings of peers and subordinates. However, if sample sizes are smaller, mainly standard errors concerning common method factors are biased. Interestingly, there are trade-off effects between the sample sizes of self-ratings and others' ratings in their effect on estimation bias. The degree of convergent and discriminant validity has no effect on the accuracy of model estimates. The chi(2) test statistic does not follow the expected distribution. Therefore, we suggest using a corrected level-specific standardized root mean square residual to analyse model fit and conclude with further recommendations for applied organizational research.
机译:例如,当验证多源反馈仪器时,验证了360度反馈工具,是多级结构方程模型,是定量可靠性的量以及收敛和判别有效性的选择方法。最近介绍了从不同额外的透视图(1级变量)(Level-1变量)的自我评级(第2级变量)和其他人的额定值的非标准多级结构方程模型。在蒙特卡罗仿真研究中,我们确定该模型的最小所需的样本尺寸。即使具有100个自我额定值的最小模拟样本大小和两个对等体和下属的两个评级,也可以精确地估计模型参数。标准误差的精确估计需要400个自我评级的样本尺寸或至少四个对等体和下属的额定值。但是,如果样本尺寸较小,则主要是常用方法因素的标准误差偏置。有趣的是,自我评级的样本尺寸与其他人评级之间的权衡效应对估计偏见的影响。收敛程度和判别有效性对模型估计的准确性没有影响。 CHI(2)测试统计不遵循预期的分布。因此,我们建议使用校正的水平特异性标准化均方均衡,分析模型适合,并结束于应用组织研究的进一步建议。

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