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Issues in Solving the Problem of Effect Size Heterogeneity in Meta-Analytic Structural Equation Modeling: A Commentary and Simulation Study on Yu, Downes, Carter, and O'Boyle (2016)

机译:求解荟萃分析结构方程模型效果规模异质性问题的问题:禹,拖棚,卡特和奥博伊尔的评论和仿真研究(2016)

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摘要

Meta-analytic structural equation modeling (MASEM) is becoming increasingly popular for testing theoretical models from a pool of correlation matrices in management and organizational studies. One limitation of the conventional MASEM approaches is that the proposed structural equation models are only tested on the average correlation matrix. It remains unclear how far the proposed models can be generalized to other populations when the correlation matrices are heterogeneous. Recently, Yu, Downes, Carter, and O'Boyle (2016) proposed a full-information MASEM approach to address this limitation by fitting structural equation models from the correlation matrices generated from a parametric bootstrap. However, their approach suffers from several conceptual issues and technical errors. In this study, we reran some of the simulations in Yu et al. by correcting all of the errors in their original studies. The findings showed that bootstrap credible intervals (CVs) work reasonably well, whereas test statistics and goodness-of-fit indices do not. We advise researchers on what they can and cannot achieve by applying the full-information MASEM approach. We recommend fitting MASEM with the two-stage structural equation modeling approach, which works well for the simulation studies. If researchers want to inspect the heterogeneity of the parameters, they may use the bootstrap CVs from the full-information MASEM approach. All of these analyses were implemented in the open-source R statistical platform; researchers can easily apply and verify the findings. This article concludes with several future directions to address the issue of heterogeneity in MASEM.
机译:元分析结构方程建模(MASEM)正变得越来越受到管理和组织研究中的相关矩阵池的理论模型的流行。传统的MASEM方法的一个限制是所提出的结构方程模型仅在平均相关矩阵上进行测试。当相关矩阵是异质的,仍然尚不清楚所提出的模型可以广泛地推广到其他群体。最近,Yu,Downes,Carter和O'Boyle(2016)提出了全面的MASEM方法,通过从参数释放的相关矩阵拟合结构方程模型来解决这些限制。然而,他们的方法遭受了几个概念问题和技术错误。在这项研究中,我们在yu等人重新划出了一些模拟。通过纠正其原始研究中的所有错误。这些调查结果表明,自动启动可信间隔(CVS)合理地工作,而测试统计和拟合良好指数没有。我们通过应用全面信息MASEM方法,建议研究人员,无法实现。我们建议使用两级结构方程建模方法拟合MASEM,适用于模拟研究。如果研究人员想要检查参数的异质性,则可以使用来自全信息MASEM方法的引导CV。所有这些分析都在开源R统计平台中实施;研究人员可以轻松申请和验证调查结果。本文缔结了几个未来的指示,以解决Masem的异质性问题。

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