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Finding groups in structural equation modeling through the partial least squares algorithm

机译:通过局部最小二乘算法发现结构方程模型中的组

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The identification of different homogeneous groups of observations and their appropriate analysis in PLS-SEM has become a critical issue in many application fields. Usually, both SEM and PLS-SEM assume the homogeneity of units on which the model is applied. The approaches of segmentation proposed in the literature, consist of estimating separate models for each segment of statistical units, assigning these units to segments defined a priori. These approaches are not fully acceptable because no causal structure is postulated among variables. In other words, a model approach should be used, where the clusters obtained are homogeneous, both with respect to the structural causal relationships, and the mean differences between clusters. Therefore, a new methodology is proposed, where simultaneously non-hierarchical clustering and PLS-SEM is applied. This methodology is motivated by the fact that the sequential approach (i.e., the application, first, of SEM or PLS-SEM and subsequently the use of a clustering algorithm on the latent scores obtained) may fail to find the correct clustering structure of data. A simulation study and an application on real data are included to evaluate the performance of the proposed methodology. (C) 2020 Elsevier B.V. All rights reserved.
机译:在PLS-SEM中鉴定不同均匀的观察组及其适当分析已成为许多应用领域的关键问题。通常,SEM和PLS-SEM都假设应用了模型的单位的同质性。文献中提出的分割方法,包括估算每个统计单位的单独模型,将这些单位分配给段定义先验。这些方法不完全可以接受,因为在变量中没有出现因果结构。换句话说,应该使用模型方法,其中获得的簇是相对于结构因果关系的均匀,以及簇之间的平均差异。因此,提出了一种新的方法,其中应用了同时非分级簇和PLS-SEM。这种方法是通过顺序方法(即,应用程序,首先,SEM或PLS-SEM的以及随后在获得的潜在分数上使用聚类算法)可能无法找到数据的正确聚类结构的事实。将仿真研究和实际数据应用应用于评估所提出的方法的性能。 (c)2020 Elsevier B.V.保留所有权利。

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