Interactions between latent variables in count regression models.

IF 3.9 2区 心理学 Q1 PSYCHOLOGY, EXPERIMENTAL Behavior Research Methods Pub Date : 2024-12-01 Epub Date: 2024-08-26 DOI:10.3758/s13428-024-02483-4
Christoph Kiefer, Sarah Wilker, Axel Mayer
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Abstract

In psychology and the social sciences, researchers often model count outcome variables accounting for latent predictors and their interactions. Even though neglecting measurement error in such count regression models (e.g., Poisson or negative binomial regression) can have unfavorable consequences like attenuation bias, such analyses are often carried out in the generalized linear model (GLM) framework using fallible covariates such as sum scores. An alternative is count regression models based on structural equation modeling, which allow to specify latent covariates and thereby account for measurement error. However, the issue of how and when to include interactions between latent covariates or between latent and manifest covariates is rarely discussed for count regression models. In this paper, we present a latent variable count regression model (LV-CRM) allowing for latent covariates as well as interactions among both latent and manifest covariates. We conducted three simulation studies, investigating the estimation accuracy of the LV-CRM and comparing it to GLM-based count regression models. Interestingly, we found that even in scenarios with high reliabilities, the regression coefficients from a GLM-based model can be severely biased. In contrast, even for moderate sample sizes, the LV-CRM provided virtually unbiased regression coefficients. Additionally, statistical inferences yielded mixed results for the GLM-based models (i.e., low coverage rates, but acceptable empirical detection rates), but were generally acceptable using the LV-CRM. We provide an applied example from clinical psychology illustrating how the LV-CRM framework can be used to model count regressions with latent interactions.

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计数回归模型中潜在变量之间的相互作用。
在心理学和社会科学领域,研究人员通常会对潜在的预测因素及其相互作用建立计数结果变量模型。尽管在此类计数回归模型(如泊松或负二叉回归)中忽略测量误差可能会产生衰减偏差等不利后果,但此类分析通常是在广义线性模型(GLM)框架内使用总分等易错协变量进行的。另一种方法是基于结构方程建模的计数回归模型,它可以指定潜在的协变量,从而考虑测量误差。然而,在计数回归模型中,如何以及何时纳入潜在协变量之间或潜在协变量与显性协变量之间的交互作用问题却很少被讨论。在本文中,我们提出了一种潜变量计数回归模型(LV-CRM),它允许包含潜协变因素以及潜协变因素和显协变因素之间的交互作用。我们进行了三项模拟研究,调查了 LV-CRM 的估计精度,并将其与基于 GLM 的计数回归模型进行了比较。有趣的是,我们发现即使在高可靠度的情况下,基于 GLM 模型的回归系数也会出现严重偏差。相比之下,即使样本量适中,LV-CRM 也能提供几乎无偏的回归系数。此外,基于 GLM 模型的统计推断结果好坏参半(即覆盖率低,但经验检出率可以接受),但使用 LV-CRM 模型的结果总体上可以接受。我们提供了一个临床心理学应用实例,说明 LV-CRM 框架如何用于建立具有潜在交互作用的计数回归模型。
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来源期刊
CiteScore
10.30
自引率
9.30%
发文量
266
期刊介绍: Behavior Research Methods publishes articles concerned with the methods, techniques, and instrumentation of research in experimental psychology. The journal focuses particularly on the use of computer technology in psychological research. An annual special issue is devoted to this field.
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