Why we need to abandon fixed cutoffs for goodness-of-fit indices: An extensive simulation and possible solutions.

IF 4.6 2区 心理学 Q1 PSYCHOLOGY, EXPERIMENTAL
Behavior Research Methods Pub Date : 2024-04-01 Epub Date: 2023-08-28 DOI:10.3758/s13428-023-02193-3
Katharina Groskurth, Matthias Bluemke, Clemens M Lechner
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引用次数: 0

Abstract

To evaluate model fit in confirmatory factor analysis, researchers compare goodness-of-fit indices (GOFs) against fixed cutoff values (e.g., CFI > .950) derived from simulation studies. Methodologists have cautioned that cutoffs for GOFs are only valid for settings similar to the simulation scenarios from which cutoffs originated. Despite these warnings, fixed cutoffs for popular GOFs (i.e., χ2, χ2/df, CFI, RMSEA, SRMR) continue to be widely used in applied research. We (1) argue that the practice of using fixed cutoffs needs to be abandoned and (2) review time-honored and emerging alternatives to fixed cutoffs. We first present the most in-depth simulation study to date on the sensitivity of GOFs to model misspecification (i.e., misspecified factor dimensionality and unmodeled cross-loadings) and their susceptibility to further data and analysis characteristics (i.e., estimator, number of indicators, number and distribution of response options, loading magnitude, sample size, and factor correlation). We included all characteristics identified as influential in previous studies. Our simulation enabled us to replicate well-known influences on GOFs and establish hitherto unknown or underappreciated ones. In particular, the magnitude of the factor correlation turned out to moderate the effects of several characteristics on GOFs. Second, to address these problems, we discuss several strategies for assessing model fit that take the dependency of GOFs on the modeling context into account. We highlight tailored (or "dynamic") cutoffs as a way forward. We provide convenient tables with scenario-specific cutoffs as well as regression formulae to predict cutoffs tailored to the empirical setting of interest.

为什么我们需要放弃拟合优度指数的固定临界值?广泛的模拟和可能的解决方案。
为了评估确证因子分析的模型拟合度,研究人员会将拟合优度指数(GOFs)与模拟研究得出的固定临界值(如 CFI > .950)进行比较。方法论专家警告说,GOF 的临界值只适用于与临界值来源的模拟情景相似的环境。尽管有这些警告,流行的 GOFs(即 χ2、χ2/df、CFI、RMSEA、SRMR)的固定临界值仍在应用研究中广泛使用。我们(1)认为需要摒弃使用固定临界值的做法,(2)回顾了固定临界值行之有效的替代方法和新出现的替代方法。我们首先介绍了迄今为止最深入的模拟研究,内容涉及 GOFs 对模型错误规范(即错误规范的因子维度和未建模的交叉负荷)的敏感性,以及它们对进一步数据和分析特征(即估计器、指标数量、响应选项的数量和分布、负荷大小、样本大小和因子相关性)的敏感性。我们将以往研究中发现的所有有影响的特征都包括在内。我们的模拟使我们能够复制众所周知的 GOFs 影响因素,并确定迄今未知或未被充分重视的影响因素。特别是,结果表明,因素相关性的大小可以缓和几个特征对 GOFs 的影响。其次,为了解决这些问题,我们讨论了几种评估模型拟合度的策略,其中考虑到了 GOFs 对建模环境的依赖性。我们强调量身定制(或 "动态")的截断值是一种可行的方法。我们提供了方便的表格,其中包含了特定情景下的截止值,以及预测截止值的回归公式,以适应相关的经验环境。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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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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