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Identifying and treating unobserved heterogeneity with FIMIX-PLS Part Ⅱ - A case study

机译:FIMIX-PLS第二部分识别和处理未观察到的异质性-案例研究

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Purpose - Part Ⅰ of this article (European Business Review, Volume 28, Issue 1) offered an overview of unobserved heterogeneity in the context of partial least squares structural equation modeling (PLS-SEM), its prevalence and challenges for social sciences researchers. This paper aims to provide an example that explains how to identify and treat unobserved heterogeneity in PLS-SEM by using the finite mixture PLS (FIMIX-PLS) module in the SmartPLS 3 software (Part Ⅱ). Design/methodology/approach - This case study illustrates the application of FIMIX-PLS using a popular corporate reputation model. Findings-The case study demonstrates the capability of FIMIX-PLS to identify whether unobserved heterogeneity significantly affects structural model relationships. Furthermore, it shows that FIMIX-PLS is particularly useful for determining the number of segments to extract from the data. Research limitations/implications - Since the introduction of FIMIX-PLS, a range of alternative latent class techniques has appeared. These techniques address some of the limitations of the approach relating to, for example, its failure to handle heterogeneity in measurement models, or its distributional assumptions. This research discusses alternative latent class techniques and calls for the joint use of FMIX-PLS and PLS prediction-oriented segmentation. Originality/value - This article is the first to offer researchers, who have not been exposed to the method, an introduction to FIMIX-PLS. Based on a state-of-the-art review of the technique, the paper offers a step-by-step tutorial on how to use FIMIX-PLS by using the SmartPLS 3 software.
机译:目的-本文的第一部分(《欧洲商业评论》,第28卷,第1期)概述了在偏最小二乘结构方程模型(PLS-SEM)的背景下未观察到的异质性,其普遍性以及对社会科学研究者的挑战。本文旨在提供一个示例,说明如何使用SmartPLS 3软件(第二部分)中的有限混合PLS(FIMIX-PLS)模块识别和处理PLS-SEM中未观察到的异质性。设计/方法/方法-此案例研究说明了使用流行的企业声誉模型的FIMIX-PLS应用。结果-案例研究证明了FIMIX-PLS能够识别未观察到的异质性是否显着影响结构模型关系。此外,它表明FIMIX-PLS对于确定要从数据中提取的段数特别有用。研究的局限性/意义-自从FIMIX-PLS推出以来,出现了一系列替代性的潜在类技术。这些技术解决了该方法的一些局限性,例如,它无法处理测量模型中的异质性或其分布假设。这项研究讨论了替代的潜在类技术,并呼吁联合使用FMIX-PLS和PLS面向预测的分割。独创性/价值-本文是第一篇向尚未接触该方法的研究人员提供FIMIX-PLS简介的文章。基于对该技术的最新综述,本文提供了有关如何通过SmartPLS 3软件使用FIMIX-PLS的分步教程。

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