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BIC and Alternative Bayesian Information Criteria in the Selection of Structural Equation Models

机译:结构方程模型选择中的BIC和替代贝叶斯信息准则

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摘要

Selecting between competing Structural Equation Models (SEMs) is a common problem. Often selection is based on the chi square test statistic or other fit indices. In other areas of statistical research Bayesian information criteria are commonly used, but they are less frequently used with SEMs compared to other fit indices. This article examines several new and old Information Criteria (IC) that approximate Bayes Factors. We compare these IC measures to common fit indices in a simulation that includes the true and false models. In moderate to large samples, the IC measures outperform the fit indices. In a second simulation we only consider the IC measures and do not include the true model. In moderate to large samples the IC measures favor approximate models that only differ from the true model by having extra parameters. Overall, SPBIC, a new IC measure, performs well relative to the other IC measures.
机译:在竞争的结构方程模型(SEM)之间进行选择是一个常见的问题。通常根据卡方检验统计量或其他拟合指数进行选择。在统计研究的其他领域,通常使用贝叶斯信息准则,但与其他拟合指数相比,它们在SEM中的使用频率较低。本文研究了几种近似贝叶斯因子的新旧信息标准(IC)。我们在包含真假模型的仿真中将这些IC度量与常见拟合指数进行了比较。在中型到大型样品中,IC量度均优于拟合指数。在第二个仿真中,我们仅考虑IC测量,不包括真实模型。在中型到大型样品中,IC测量值偏爱近似模型,这些模型仅具有额外的参数,才与真实模型有所不同。总体而言,SPBIC是一种新的IC措施,相对于其他IC措施而言,其性能要好。

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