在r和python中实现Cb-sem:回顾和比较研究

Q2 Decision Sciences
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引用次数: 0

摘要

鉴于在学术界和企业中广泛使用的免费开源软件包越来越受欢迎,本研究探索了使用R和Python包实现基于协方差的结构方程建模(CB-SEM)方法。本研究考虑的研究模型是欧洲消费者满意指数(ECSI),该指数在顾客满意和顾客忠诚相关研究中经常使用。此外,从手机行业收集到的基于调查的数据也被引用到之前的研究中。通过模拟不同的场景,即缺失数据、非正态和单指标潜在变量,本文回顾并比较了R包“lavaan”和Python包“semopy”提供的功能。本文提供了在实现模型时处理这些场景的建议。虽然“semopy”和“lavaan”都为测量模型和结构模型提供了可比较的结果,但在使用这些开源软件包时需要注意一些实际问题,特别是在数据集缺失数据的情况下以及使用具有单一指标潜在变量的模型时。使用这些包的开发人员和研究人员将从本文中受益匪浅,它将使他们能够选择性地为他们的特定用例确定正确的方法和功能。本研究通过使用最近发布的Python包“semopy”研究CB-SEM的实现,并将结果与已建立的R包“lavaan”进行比较,填补了文献中的空白。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CB-SEM IMPLEMENTATION IN R AND PYTHON: A REVIEW AND COMPARATIVE STUDY
Given the increasing popularity of freely available open-source packages being widely used in academia and corporates, this study explores the implementation of a covariance-based structural equation modelling (CB-SEM) method using R and Python packages. The research model considered for the study is the European Consumer Satisfaction Index (ECSI) which has been frequently used in customer satisfaction and customer loyalty related studies. Moreover, survey-based data gathered from the mobile phone industry as cited in previous research has been used. By simulating different scenarios, namely, missing data, non-normality, and single indicator latent variables, the paper reviews and compares the functionalities provided in ‘lavaan’, an R package, and ‘semopy’, a Python package. This paper provides suggestions to handle these scenarios while implementing the models. It establishes that while both ‘semopy’ and ‘lavaan’ provide comparable results for the measurement model and the structural model, there are a few practical considerations that need attention while using these open-source packages, especially in the case of datasets with missing data and when using models having single indicator latent variables. The developers and researchers using these packages will greatly benefit from this paper and it will enable them to be selective in identifying the right methods and functions for their specific use cases. This study fills the gap in the literature by studying the implementation of CB-SEM using the recently released Python package ‘semopy’ and comparing the results with an established R package ‘lavaan’.
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来源期刊
Journal of Applied Structural Equation Modeling
Journal of Applied Structural Equation Modeling Business, Management and Accounting-Business, Management and Accounting (miscellaneous)
CiteScore
9.50
自引率
0.00%
发文量
12
审稿时长
12 weeks
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