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Evaluating the model fit of diffusion models with the root mean square error of approximation

机译:评估扩散模型的模型拟合与近似的根均方误差

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The statistical evaluation of model fit is one of the greatest challenges in the application of diffusion modeling in research on individual differences. Relative model fit indices such as the AIC and BIC are often used for model comparison, but they provide no information about absolute model fit. Statistical and graphical tests can be used to identify individuals whose data cannot be accounted for by the diffusion model, but they become overly sensitive when trial numbers are large, and are subjective and time-consuming. We propose that the evaluation of model fit may be supplemented with the root mean square error of approximation (RMSEA; Steiger & Lind, 1980), which is one of the most popular goodness-of-fit indices in structural equation modeling. It is largely invariant to trial numbers, and allows identifying cases with poor model fit, calculating confidence intervals, and conducting power analyses. In two simulation studies, we evaluated whether the RMSEA correctly rejects badly-fitting models irrespective of trial numbers. Moreover, we evaluated how variation in the number of trials, the degree of measurement noise, the presence of contaminant outliers, and the number of estimated parameters affect RMSEA values. The RMSEA correctly distinguished between well- and badly-fitting models unless trial numbers were very small. Moreover, RMSEA values were in a value range expected from structural equation modeling. Finally, we computed cut-off values as heuristics for model acceptance or rejection. In a third simulation study we assessed how the RMSEA performs in model selection in comparison to the AIC and BIC. The RMSEA correctly identified the generating model in the majority of cases, but was outperformed by the AIC and BIC. All in all, we showed that the RMSEA can be of great value in the evaluation of absolute model fit, but that it should only be used in addition to other fit indices in model selection scenarios. (C) 2016 Elsevier Inc. All rights reserved.
机译:模型拟合的统计评估是扩散模型在个体差异研究中应用的最大挑战之一。相对模型拟合指数(如AIC和BIC)通常用于模型比较,但它们不提供关于绝对模型拟合的信息。统计和图形测试可用于识别扩散模型无法解释其数据的个体,但当试验数量较大时,这些测试变得过于敏感,且主观且耗时。我们建议,模型拟合的评估可以用均方根近似误差(RMSEA;Steiger&Lind,1980)来补充,这是结构方程建模中最常用的拟合优度指标之一。它在很大程度上对试验数量保持不变,并允许识别模型拟合较差的病例、计算置信区间和进行功率分析。在两项模拟研究中,我们评估了RMSEA是否正确地拒绝了不符合要求的模型,而与试验数量无关。此外,我们还评估了试验次数、测量噪声程度、污染物异常值的存在以及估计参数数量的变化如何影响RMSEA值。RMSEA正确区分了拟合良好的模型和拟合不良的模型,除非试验数量非常小。此外,RMSEA值在结构方程建模的预期值范围内。最后,我们计算截止值,作为模型接受或拒绝的启发。在第三个模拟研究中,我们评估了RMSEA与AIC和BIC相比在模型选择中的表现。在大多数情况下,RMSEA正确识别了生成模型,但AIC和BIC的性能优于RMSEA。总之,我们表明,RMSEA在评估绝对模型拟合方面具有重要价值,但它只应在模型选择场景中与其他拟合指数一起使用。(C) 2016爱思唯尔公司版权所有。

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