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Investigating the chi-square-based model-fit indexes for WLSMV and ULSMV estimators

机译:研究WLSMV和ULSMV估计量的基于卡方的模型拟合指数

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In structural equation modeling (SEM), researchers use the model chi-square statistic and model-fit indexes to evaluate model-data fit. Root mean square error of approximation (RMSEA), comparative fit index (CFI), and Tucker-Lewis index (TLI) are widely applied model-fit indexes.;When data are ordered and categorical, the most popular estimator is the diagonally weighted least squares (DWLS) estimator. Robust corrections have been proposed to adjust the uncorrected chi-square statistic from DWLS so that its first and second order moments are in alignment with the target central chi-square distribution under correctly specified models. DWLS with such a correction is called the mean- and variance-adjusted weighted least squares (WLSMV) estimator. An alternative to WLSMV is the mean-and variance-adjusted unweighted least squares (ULSMV) estimator, which has been shown to perform as well as, or slightly better than WLSMV.;Because the chi-square statistic is corrected, the chi-square-based RMSEA, CFI, and TLI are thus also corrected by replacing the uncorrected chi-square statistic with the robust chi-square statistic. The robust model fit indexes calculated in such a way are named as the population-corrected robust (PR) model fit indexes following Brosseau-Liard, Savalei, and Li (2012). The PR model fit indexes are currently reported in almost every application when WLSMV or ULSMV is used. Nevertheless, previous studies have found the PR model fit indexes from WLSMV are sensitive to several factors such as sample sizes, model sizes, and thresholds for categorization.;The first focus of this dissertation is on the dependency of model fit indexes on the thresholds for ordered categorical data. Because the weight matrix in the WLSMV fit function and the correction factors for both WLSMV and ULSMV include the asymptotic variances of thresholds and polychoric correlations, the model fit indexes are very likely to depend on the thresholds. The dependency of model fit indexes on the thresholds is not a desirable property, because when the misspecification lies in the factor structures (e.g., cross loadings are ignored or two factors are considered as a single factor), model fit indexes should reflect such misspecification rather than the threshold values. As alternatives to the PR model fit indexes, Brosseau-Liard et al. (2012), Brosseau-Liard and Savalei (2014), and Li and Bentler (2006) proposed the sample-corrected robust (SR) model fit indexes. The PR fit indexes are found to converge to distorted asymptotic values, but the SR fit indexes converge to their definitions asymptotically. However, the SR model fit indexes were proposed for continuous data, and have been neither investigated nor implemented in SEM software when WLSMV and ULSMV are applied. This dissertation thus investigates the PR and SR model fit indexes for WLSMV and ULSMV. The first part of the simulation study examines the dependency of the model fit indexes on the thresholds when the model misspecification results from omitting cross-loadings or collapsing factors in confirmatory factor analysis. The study is conducted on extremely large computer-generated datasets in order to approximate the asymptotic values of model fit indexes. The results find that only the SR fit indexes from ULSMV are independent of the population threshold values, given the other design factors. The PR fit indexes from ULSMV, and the PR and SR fit indexes from WLSMV are influenced by thresholds, especially when data are binary and the hypothesized model is greatly misspecified.;The second part of the simulation varies the sample sizes from 100 to 1000 to investigate whether the SR fit indexes under finite samples are more accurate estimates of the defined values of RMSEA, CFI, and TLI, compared with the uncorrected model fit indexes without robust correction and the PR fit indexes. Results show that the SR fit indexes are the more accurate in general. However, when the thresholds are different across items, data are binary, and sample size is less than 500, all versions of these indexes can be very inaccurate. In such situations, larger sample sizes are needed.;In addition, the conventional cutoffs developed from continuous data with maximum likelihood (e.g., RMSEA .95, and TLI > .95; Hu & Bentler, 1999) have been applied to WLSMV and ULSMV regardless of the arguments against such a practice (e.g., Marsh, Hau, & Wen, 2004). For comparison purposes, this dissertation reports the RMSEA, CFI, and TLI based on continuous data using maximum likelihood before the variables are categorized to create ordered categorical data. Results show that the model fit indexes from maximum likelihood are very different from those from WLSMV and ULSMV, suggesting that the conventional rules should not be applied to WLSMV and ULSMV.
机译:在结构方程模型(SEM)中,研究人员使用模型卡方统计量和模型拟合索引来评估模型数据拟合。近似均方根误差(RMSEA),比较拟合指数(CFI)和塔克-刘易斯指数(TLI)是广泛应用的模型拟合指数;当对数据进行排序和分类时,最受欢迎的估计量是对角加权最小平方(DWLS)估算器。已提出鲁棒校正来调整DWLS的未校正卡方统计量,以便在正确指定的模型下其一阶和二阶矩与目标中心卡方分布对齐。具有这种校正的DWLS称为均值和方差调整的加权最小二乘(WLSMV)估计器。 WLSMV的替代方法是均值和方差调整后的非加权最小二乘(ULSMV)估计器,其性能已证明与WLSMV相同或略好于WLSMV;由于对卡方统计量进行了校正,因此卡方因此,也可以通过将未校正的卡方统计量替换为健壮的卡方统计量来校正基于RMSEA,CFI和TLI的值。按照Brosseau-Liard,Savalei和Li(2012)的方法,以这种方式计算的稳健模型拟合指标被称为总体校正的稳健(PR)模型拟合指标。当使用WLSMV或ULSMV时,几乎每个应用程序中当前都会报告PR模型拟合指数。尽管如此,以前的研究已经发现WLSMV的PR模型拟合指数对几个因素敏感,例如样本量,模型大小和分类阈值。;本文的首要重点是模型拟合指数对阈值的依赖性。有序分类数据。因为WLSMV拟合函数中的权重矩阵以及WLSMV和ULSMV的校正因子都包含阈值的渐近方差和多变量相关性,所以模型拟合指数很可能取决于阈值。模型拟合索引对阈值的依赖性不是理想的属性,因为当错误指定位于因素结构中时(例如,忽略交叉加载或将两个因素视为一个因素),模型拟合指标应该反映这种错误指定,而不是超过阈值。作为PR模型拟合指数的替代方法,Brosseau-Liard等人。 (2012),Brosseau-Liard和Savalei(2014)以及Li和Bentler(2006)提出了样本校正的鲁棒(SR)模型拟合指数。发现PR拟合索引收敛到失真的渐近值,但是SR拟合索引渐近收敛到它们的定义。然而,SR模型拟合指标是针对连续数据提出的,在使用WLSMV和ULSMV时,既没有进行研究也没有在SEM软件中实现。因此,本文研究了WLSMV和ULSMV的PR和SR模型拟合指标。模拟研究的第一部分检查了模型拟合指标在阈值上的依赖关系,当模型不确定性是由于在验证性因子分析中忽略了交叉载荷或崩溃因子而导致的。为了对模型拟合索引的渐近值进行近似,对大型计算机生成的数据集进行了研究。结果发现,给定其他设计因素,仅来自ULSMV的SR拟合指数与总体阈值无关。 ULSMV的PR拟合指数以及WLSMV的PR和SR拟合指数受阈值的影响,尤其是在数据为二进制且假设模型不正确的情况下;第二部分模拟将样本大小从100更改为1000到1000研究与没有健壮校正的未经校正模型拟合指标和PR拟合指标相比,有限样本下的SR拟合指标是否更准确地估计了RMSEA,CFI和TLI的定义值。结果表明,SR拟合指数通常更准确。但是,当各个项目的阈值不同,数据为二进制且样本大小小于500时,这些索引的所有版本都可能非常不准确。在这种情况下,需要更大的样本量。此外,从连续数据中以最大似然法(例如,RMSEA .95和TLI> .95; Hu&Bentler,1999)开发的常规临界值已应用于WLSMV和ULSMV无论反对这种做法的论点如何(例如,Marsh,Hau和Wen,2004年)。为了进行比较,本文在对变量进行分类以创建有序的分类数据之前,使用最大似然率报告基于连续数据的RMSEA,CFI和TLI。结果表明,最大似然度的模型拟合指数与WLSMV和ULSMV的拟合指数存在很大差异,这表明常规规则不应应用于WLSMV和ULSMV。

著录项

  • 作者

    Xia, Yan.;

  • 作者单位

    The Florida State University.;

  • 授予单位 The Florida State University.;
  • 学科 Statistics.
  • 学位 Ph.D.
  • 年度 2016
  • 页码 106 p.
  • 总页数 106
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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