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Data-Generating Mechanisms Versus Constructively-Defined Latent Variables in Multitrait-Multimethod Analysis: A Comment on Castro-Schilo Widaman and Grimm (2013)

机译:多特征多方法分析中的数据生成机制与构造性定义的潜在变量:对Castro-SchiloWidaman和Grimm的评论(2013年)

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摘要

In a recent article, compared different approaches for relating multitrait-multimethod (MTMM) data to external variables. Castro-Schilo et al. reported that estimated associations with external variables were in part biased when either the Correlated Traits-Correlated Uniqueness (CT-CU) or Correlated Traits-Correlated (Methods – 1) [CT-C(M – 1)] models were fit to data generated from the Correlated Traits-Correlated Methods (CT-CM) model, whereas the data-generating CT-CM model accurately reproduced these associations. Castro-Schilo et al. argued that the CT-CM model adequately represents the data-generating mechanism in MTMM studies, whereas the CT-CU and CT-C(M – 1) models do not fully represent the MTMM structure. In this comment, we question whether the CT-CM model is more plausible as a data-generating model for MTMM data than the CT-C(M – 1) model. We show that the CT-C(M – 1) model can be formulated as a reparameterization of a basic MTMM true score model that leads to a meaningful and parsimonious representation of MTMM data. We advocate the use CFA-MTMM models in which latent trait, method, and error variables are explicitly and constructively defined based on psychometric theory.
机译:在最近的一篇文章中,比较了将多特征多方法(MTMM)数据与外部变量相关联的不同方法。 Castro-Schilo等。报告称,当相关性状相关唯一性(CT-CU)或相关性状相关相关性(方法– 1)[CT-C(M – 1)]模型适合所生成的数据时,与外部变量的估计关联部分存在偏差从相关性状相关方法(CT-CM)模型中提取数据,而数据生成的CT-CM模型则准确地再现了这些相关性。 Castro-Schilo等。他们认为,CT-CM模型可以充分代表MTMM研究中的数据生成机制,而CT-CU和CT-C(M – 1)模型不能完全代表MTMM结构。在这篇评论中,我们质疑CT-CM模型作为MTMM数据的数据生成模型是否比CT-C(M – 1)模型更合理。我们表明,CT-C(M – 1)模型可以表述为基本MTMM真实得分模型的重新参数化,从而导致有意义且简约的MTMM数据表示。我们提倡使用CFA-MTMM模型,其中基于心理计量学理论显式且建设性地定义了潜在特征,方法和错误变量。

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