Department of Psychology, Arizona State University.
Am Psychol. 2023 Dec;78(9):1061-1075. doi: 10.1037/amp0001213.
Scale validation is vital to psychological research because it ensures that scores from measurement scales represent the intended construct. Fit indices are commonly used to provide quantitative evidence that a proposed factor structure is plausible. However, there is a mismatch between guidelines for evaluating fit of the factor models and the data that most researchers have. Namely, fit guidelines are based on the simulations that assume item responses are collected on a continuous scale whereas most researchers collect discrete responses such as with a Likert-type scale. In this article, we show that common guidelines derived from assuming continuous responses (e.g., root-mean-square error of approximation < 0.06, comparative fit index > 0.95) do not generalize to factor models applied to discrete responses. Specifically, discrete responses provide less information than continuous responses, so less information about misfit is passed to fit indices. Traditional guidelines, therefore, end up being too lenient and lose their ability to identify that a model may have a poor fit. We provide one possible solution by extending the recently developed dynamic fit index framework to accommodate discrete responses common in psychology. We conduct a simulation study to provide evidence that the proposed method consistently distinguishes between well-fitting and poorly fitting models. Results showed that our proposed cutoffs maintained at least 90% sensitivity to misspecification across studied conditions, whereas traditional cutoffs were highly inconsistent and frequently exhibited sensitivity below 50%. The proposed method is included in the dynamic R package and as a web-based Shiny application to make it easily accessible to psychologists. (PsycInfo Database Record (c) 2024 APA, all rights reserved).
量表验证对于心理学研究至关重要,因为它确保了测量量表的得分能够代表预期的结构。拟合指数常用于提供定量证据,证明所提出的因素结构是合理的。然而,评估因素模型拟合的准则与大多数研究人员的数据之间存在不匹配。具体来说,拟合准则基于假设项目反应是在连续量表上收集的模拟,而大多数研究人员收集离散反应,如李克特量表。在本文中,我们表明,基于假设连续反应的常见准则(例如,逼近均方根误差<0.06,比较拟合指数>0.95)不适用于应用于离散反应的因素模型。具体来说,离散反应提供的信息比连续反应少,因此拟合指数传递的关于不拟合的信息较少。因此,传统准则最终过于宽松,失去了识别模型可能拟合不良的能力。我们通过扩展最近开发的动态拟合指数框架来提供一种可能的解决方案,以适应心理学中常见的离散反应。我们进行了一项模拟研究,以提供证据表明,所提出的方法能够始终如一地区分拟合良好和拟合不良的模型。结果表明,我们提出的截止值在研究条件下至少保持了 90%的对误指定的敏感性,而传统的截止值高度不一致,并且经常表现出低于 50%的敏感性。该方法包含在动态 R 包中,并作为基于网络的 Shiny 应用程序,以使其易于心理学家使用。(PsycInfo 数据库记录(c)2024 APA,保留所有权利)。