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Comparison of Bootstrap Confidence Interval Methods for GSCA Using a Monte Carlo Simulation

机译:蒙特卡洛模拟的GSCA自举置信区间方法比较

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摘要

Generalized structured component analysis (GSCA) is a theoretically well-founded approach to component-based structural equation modeling (SEM). This approach utilizes the bootstrap method to estimate the confidence intervals of its parameter estimates without recourse to distributional assumptions, such as multivariate normality. It currently provides the bootstrap percentile confidence intervals only. Recently, the potential usefulness of the bias-corrected and accelerated bootstrap (BCa) confidence intervals (CIs) over the percentile method has attracted attention for another component-based SEM approach—partial least squares path modeling. Thus, in this study, we implemented the BCa CI method into GSCA and conducted a rigorous simulation to evaluate the performance of three bootstrap CI methods, including percentile, BCa, and Student's t methods, in terms of coverage and balance. We found that the percentile method produced CIs closer to the desired level of coverage than the other methods, while the BCa method was less prone to imbalance than the other two methods. Study findings and implications are discussed, as well as limitations and directions for future research.
机译:广义结构化构件分析(GSCA)是基于构件的结构方程模型(SEM)的理论基础。该方法利用自举方法来估计其参数估计值的置信区间,而无需求助于分布假设,例如多元正态性。当前,它仅提供自举百分比置信区间。最近,在百分位数方法上进行偏差校正和加速的自举(BCa)置信区间(CIs)的潜在用途已引起了另一种基于组件的SEM方法的关注-部分最小二乘路径建模。因此,在本研究中,我们将BCa CI方法应用于GSCA,并进行了严格的仿真,以评估三种自举CI方法(包括百分位,BCa和Student t方法)在覆盖率和平衡方面的性能。我们发现,百分位数方法产生的CI比其他方法更接近所需的覆盖水平,而BCa方法比其他两种方法更不容易出现失衡。讨论了研究结果和影响,以及未来研究的局限性和方向。

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