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Using Multilevel Factor Analysis With Clustered Data: Investigating the Factor Structure of the Positive Values Scale

机译:将多级因子分析与聚类数据结合使用:调查正值量表的因子结构

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Advances in multilevel modeling techniques now make it possible to investigate the psychometric properties of instruments using clustered data. Factor models that overlook the clustering effect can lead to underestimated standard errors, incorrect parameter estimates, and model fit indices. In addition, factor structures may differ depending on the level of analysis. The current study illustrates the application of multilevel factor analytic techniques using a large statewide sample of middle school students (n = 39,364) from 423 schools. Both multilevel exploratory and confirmatory factor analyses were used to investigate the factor structure of the Positive Values Scale (PVS) as part of a school climate survey. Results showed that for the PVS, a two-correlated factor model at Level 1 and a one-factor model at Level 2 best fit the data. Implications and guidance for applied researchers are discussed.
机译:现在,多级建模技术的进步使得使用聚类数据研究仪器的心理测量特性成为可能。忽略聚类效应的因子模型可能会导致标准误差被低估,参数估计不正确以及模型拟合指数。另外,因子结构可能会因分析水平而异。当前的研究说明了使用来自423个学校的全州范围内的一大批中学生(n = 39,364)的大型因子分析技术的应用。作为学校气候调查的一部分,多级探索性和确认性因子分析均用于调查正值量表(PVS)的因子结构。结果表明,对于PVS,级别1的两相关因子模型和级别2的单因子模型最适合该数据。讨论了对应用研究人员的意义和指导。

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