在正确的结构表征下,基于因子和基于构件的结构方程建模方法的比较评价

IF 1.5 3区 心理学 Q3 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS British Journal of Mathematical & Statistical Psychology Pub Date : 2021-10-18 DOI:10.1111/bmsp.12255
Gyeongcheol Cho, Marko Sarstedt, Heungsun Hwang
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引用次数: 17

摘要

结构方程建模(SEM)已经发展成两个领域,基于因素和基于组件,取决于结构是否在统计上表示为共同因素或组件。这两个SEM领域在概念上是不同的,每个领域都使用统计构造代理中的任何一个假设它们自己的人口模型,并且应该使用统计SEM方法来估计其构造表示对应于它们假设的模型。然而,SEM方法通常只在人口因子模型下进行评估和比较,从而提供了有关其相对性能的误导性结论。这在一定程度上是因为人口组成模型及其关系还没有得到明确的表述。此外,研究SEM方法对潜在的构念错误表征的有效性也非常重要,因为研究人员可能经常缺乏明确的理论来确定一个因素或成分是否更能代表给定的构念。为了解决这些问题,本研究首先澄清了几种种群成分模型及其关系,然后在各种实验条件下对四种SEM方法进行了全面评估-基于因素的SEM的最大似然方法和因子得分回归以及基于组件的SEM的广义结构化成分分析(GSCA)和偏最小二乘路径建模(PLSPM)。我们确认基于因子的SEM方法应该优先用于估算因子模型,而基于组件的SEM方法应该用于估算组件模型。重要的是,基于组件的方法通常比基于因素的方法在构造错误表示方面更健壮。在基于组件的方法中,应该选择GSCA而不是PLSPM,无论构造是否被错误表示。
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A comparative evaluation of factor- and component-based structural equation modelling approaches under (in)correct construct representations

Structural equation modelling (SEM) has evolved into two domains, factor-based and component-based, dependent on whether constructs are statistically represented as common factors or components. The two SEM domains are conceptually distinct, each assuming their own population models with either of the statistical construct proxies, and statistical SEM approaches should be used for estimating models whose construct representations correspond to what they assume. However, SEM approaches have often been evaluated and compared only under population factor models, providing misleading conclusions about their relative performance. This is partly because population component models and their relationships have not been clearly formulated. Also, it is of fundamental importance to examine how robust SEM approaches can be to potential misrepresentation of constructs because researchers may often lack clear theories to determine whether a factor or component is more representative of a given construct. Addressing these issues, this study begins by clarifying several population component models and their relationships and then provides a comprehensive evaluation of four SEM approaches – the maximum likelihood approach and factor score regression for factor-based SEM as well as generalized structured component analysis (GSCA) and partial least squares path modelling (PLSPM) for component-based SEM – under various experimental conditions. We confirm that the factor-based SEM approaches should be preferred for estimating factor models, whereas the component-based SEM approaches should be chosen for component models. Importantly, the component-based approaches are generally more robust to construct misrepresentation than the factor-based ones. Of the component-based approaches, GSCA should be chosen over PLSPM, regardless of whether or not constructs are misrepresented.

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来源期刊
CiteScore
5.00
自引率
3.80%
发文量
34
审稿时长
>12 weeks
期刊介绍: The British Journal of Mathematical and Statistical Psychology publishes articles relating to areas of psychology which have a greater mathematical or statistical aspect of their argument than is usually acceptable to other journals including: • mathematical psychology • statistics • psychometrics • decision making • psychophysics • classification • relevant areas of mathematics, computing and computer software These include articles that address substantitive psychological issues or that develop and extend techniques useful to psychologists. New models for psychological processes, new approaches to existing data, critiques of existing models and improved algorithms for estimating the parameters of a model are examples of articles which may be favoured.
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