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Treating unobserved heterogeneity in PLS path modeling: a comparison of FIMIX-PLS with different data analysis strategies

机译:在PLS路径建模中处理不可观察的异质性:FIMIX-PLS与不同数据分析策略的比较

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摘要

In the social science disciplines, the assumption that the data stem from a single homogeneous population is often unrealistic in respect of empirical research. When applying a causal modeling approach, such as partial least squares path modeling, segmentation is a key issue in coping with the problem of heterogeneity in the estimated cause-effect relationships. This article uses the novel finite-mixture partial least squares (FIMIX-PLS) method to uncover unobserved heterogeneity in a complex path modeling example in the field of marketing. An evaluation of the results includes a comparison with the outcomes of several data analysis strategies based on a priori information or it-means cluster analysis. The results of this article underpin the effectiveness and the advantageous capabilities of FIMIX-PLS in general PLS path model set-ups by means of empirical data and formative as well as reflective measurement models. Consequently, this research substantiates the general applicability of FIMIX-PLS to path modeling as a standard means of evaluating PLS results by addressing the problem of unobserved heterogeneity.
机译:在社会科学学科中,关于数据来自单一同质总体的假设在实证研究方面通常是不现实的。当应用因果建模方法(例如偏最小二乘路径建模)时,分段是应付估计因果关系中异质性问题的关键问题。本文使用新颖的有限混合偏最小二乘(FIMIX-PLS)方法在营销领域的复杂路径建模示例中发现了未观察到的异质性。结果评估包括与基于先验信息或均值聚类分析的几种数据分析策略的结果进行比较。本文的结果通过经验数据,形成性和反射性测量模型,证明了FIMIX-PLS在常规PLS路径模型设置中的有效性和优势功能。因此,这项研究证实了FIMIX-PLS在路径建模方面的普遍适用性,这是通过解决未观察到的异质性问题来评估PLS结果的标准方法。

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