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Assessing measurement model quality in PLS-SEM using confirmatory composite analysis

机译:使用确定性复合分析评估PLS-SEM中的测量模型质量

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Confirmatory factor analysis (CFA) has historically been used to develop and improve reflectively measured constructs based on the domain sampling model. Compared to CFA, confirmatory composite analysis (CCA) is a recently proposed alternative approach applied to confirm measurement models when using partial least squares structural equation modeling (PLS-SEM). CCA is a series of steps executed with PLS-SEM to confirm both reflective and formative measurement models of established measures that are being updated or adapted to a different context. CCA is also useful for developing new measures. Finally, CCA offers several advantages over other approaches for confirming measurement models consisting of linear composites.
机译:历史上,基于域采样模型,使用验证性因子分析(CFA)来开发和改进反射测量的构造。与CFA相比,确认性复合分析(CCA)是最近提出的另一种方法,用于在使用偏最小二乘结构方程模型(PLS-SEM)时确认测量模型。 CCA是用PLS-SEM执行的一系列步骤,用于确认已建立的度量的反射度量和形成度量模型,这些度量正在更新或适应于不同的情况。 CCA对于制定新措施也很有用。最后,与其他方法相比,CCA在确定由线性复合材料组成的测量模型方面具有许多优势。

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