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The Impact of Intraclass Correlation on the Effectiveness of Level-Specific Fit Indices in Multilevel Structural Equation Modeling

机译:类内相关性对多层结构方程建模中特定水平拟合指标有效性的影响

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摘要

Several researchers have recommended that level-specific fit indices should be applied to detect the lack of model fit at any level in multilevel structural equation models. Although we concur with their view, we note that these studies did not sufficiently consider the impact of intraclass correlation (ICC) on the performance of level-specific fit indices. Our study proposed to fill this gap in the methodological literature. A Monte Carlo study was conducted to investigate the performance of (a) level-specific fit indices derived by a partially saturated model method (e.g., CFIPS_B and CFIPS_W) and (b) SRMRW and SRMRB in terms of their performance in multilevel structural equation models across varying ICCs. The design factors included intraclass correlation (ICC: ICC1 = 0.091 to ICC6 = 0.500), numbers of groups in between-level models (NG: 50, 100, 200, and 1,000), group size (GS: 30, 50, and 100), and type of misspecification (no misspecification, between-level misspecification, and within-level misspecification). Our simulation findings raise a concern regarding the performance of between-level-specific partial saturated fit indices in low ICC conditions: the performances of both TLIPS_B and RMSEAPS_B were more influenced by ICC compared with CFIPS_B and SRMRB. However, when traditional cutoff values (RMSEA≤ 0.06; CFI, TLI≥ 0.95; SRMR≤ 0.08) were applied, CFIPS_B and TLIPS_B were still able to detect misspecified between-level models even when ICC was as low as 0.091 (ICC1). On the other hand, both RMSEAPS_B and SRMRB were not recommended under low ICC conditions.
机译:几位研究人员建议应使用特定于水平的拟合指数来检测多层次结构方程模型中任何水平的模型拟合不足。尽管我们同意他们的观点,但我们注意到这些研究并未充分考虑类内相关性(ICC)对特定水平拟合指数的影响。我们的研究建议填补方法论文献中的这一空白。进行了蒙特卡洛研究,以研究(a)通过部分饱和模型方法(例如CFIPS_B和CFIPS_W)得出的特定于水平的拟合指数,以及(b)SRMRW和SRMRB在多级结构方程模型中的性能跨各种ICC。设计因素包括组内相关性(ICC:ICC1 = 0.091至ICC6 = 0.500),层级模型之间的组数(NG:50、100、200和1,000),组大小(GS:30、50和100) )和错误指定类型(无错误指定,级别间错误指定和级别内错误指定)。我们的仿真结果引起了人们对低ICC条件下特定级别之间的部分饱和拟合指数的性能的担忧:与CFIPS_B和SRMRB相比,ICC对TLIPS_B和RMSEAPS_B的性能影响更大。但是,当应用传统的临界值(RMSEA≤0.06; CFI,TLI ≥0.95; SRMR ≤0.08)时,CF I PS_ B 和TL I PS_ B 仍然能够检测到错误指定的级别之间的模型。另一方面,不建议在低ICC条件下使用RMSE A PS_ B 和SRM R B

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