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Two new methods for estimating structural equation models: An illustration and acomparison with two established methods

机译:估算结构方程模型的两种新方法:两种建立方法的说明和比较

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The application of structural equation models (SEMs) is common in marketing and the behavioral sciences. Accordingly, the exploration of more effective methods to estimate SEMs is also a popular area of research. Croon (2002) and Skrondal and Laake (2001) have each proposed a new method for estimating SEMs, but since these proposals nearly a decade ago, these methods have been mostly overlooked by applied researchers. We suggest that reasons for this oversight may include not only a lack of guidance in implementing these new methods but also the absence of a formal comparison to review these new methods relative to the more familiar maximum likelihood structural equation modeling (MLSEM) and partial least squares (PLS). In this paper, our goal was to make the Croon and Skrondal-Laake (SL) methods more accessible to applied researchers. We first provide a step-by-step illustration of how to implement the Croon and SL methods. We also present the first comprehensive evaluation of the new methods relative to MLSEM and PLS. From this evaluation, we can better appreciate the circumstances under which these new methods are preferable to MLSEM and PLS. Thus, we intend to help readers understand how and when to apply these new methods.
机译:结构方程模型(SEM)的应用在市场营销和行为科学中很常见。因此,探索更有效的方法来估计SEMs也是热门的研究领域。 Croon(2002)以及Skrondal和Laake(2001)各自提出了一种估算SEM的新方法,但是自从近十年前提出这些建议以来,这些方法大部分被应用研究人员所忽视。我们建议这种疏忽的原因可能不仅包括在实施这些新方法方面缺乏指导,而且还缺乏相对于更为熟悉的最大似然结构方程模型(MLSEM)和偏最小二乘法进行形式比较的形式,以审查这些新方法(PLS)。在本文中,我们的目标是使应用研究人员更容易使用Croon和Skrondal-Laake(SL)方法。我们首先提供有关如何实现Croon和SL方法的分步说明。我们还介绍了相对于MLSEM和PLS的新方法的首次综合评估。通过此评估,我们可以更好地理解在什么情况下这些新方法优于MLSEM和PLS。因此,我们打算帮助读者了解如何以及何时应用这些新方法。

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