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首页> 外文期刊>International journal of methods in psychiatric research >Effects of ignoring clustered data structure in confirmatory factor analysis of ordered polytomous items: a simulation study based on PANSS
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Effects of ignoring clustered data structure in confirmatory factor analysis of ordered polytomous items: a simulation study based on PANSS

机译:忽略聚类数据结构在有序多义项确认因素分析中的作用:基于PANSS的模拟研究

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摘要

Statistical theory indicates that hierarchical clustering by interviewers or raters needs to be considered to avoid incorrect inferences when performing any analyses including regression, factor analysis (FA) or item response theory (IRT) modelling of binary or ordinal data. We use simulated Positive and Negative Syndrome Scale (PANSS) data to show the consequences (in terms of bias, variance and mean square error) of using an analysis ignoring clustering on confirmatory factor analysis (CFA) estimates. Our investigation includes the performance of different estimators, such as maximum likelihood, weighted least squares and Markov Chain Monte Carlo (MCMC). Our simulation results suggest that ignoring clustering may lead to serious bias of the estimated factor loadings, item thresholds, and corresponding standard errors in CFAs for ordinal item response data typical of that commonly encountered in psychiatric research. In addition, fit indices tend to show a poor fit for the hypothesized structural model. MCMC estimation may be more robust against clustering than maximum likelihood and weighted least squares approaches but further investigation of these issues is warranted in future simulation studies of other datasets. Copyright (c) 2015 John Wiley & Sons, Ltd.
机译:统计理论表明,在进行包括二进制或序数数据的回归,因子分析(FA)或项目响应理论(IRT)建模在内的任何分析时,都应考虑由访调员或评估者进行的层次聚类,以避免错误的推断。我们使用模拟的正负综合症量表(PANSS)数据来显示使用分析而忽略基于确认性因子分析(CFA)估计的聚类的结果(根据偏倚,方差和均方误差)。我们的调查包括不同估计量的性能,例如最大似然,加权最小二乘和马尔可夫链蒙特卡洛(MCMC)。我们的模拟结果表明,忽略聚类可能会导致估计的因素负荷,项目阈值以及CFA中序贯项目响应数据(通常是精神病学研究中常见的)的标准误差严重偏差。另外,拟合指数倾向于显示与假设的结构模型的拟合差。 MCMC估计在聚类方面可能比最大似然法和加权最小二乘方法更健壮,但在其他数据集的未来仿真研究中有必要进一步研究这些问题。版权所有(c)2015 John Wiley&Sons,Ltd.

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