A simulation-based scaled test statistic for assessing model-data fit in least-squares unrestricted factor-analysis solutions
收藏PsychArchives2023-11-23 更新2026-04-25 收录
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https://hdl.handle.net/20.500.12034/9145
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资源简介:
A shortcoming of least-squares unrestricted factor analysis (UFA) procedures, which are widely used in psychometric applications is that a test statistic for assessing model-data fit cannot be easily derived from the minimum fit function value. This paper proposes a chi-square type goodness-of-fit test statistic intended for the principal-axis, MINRES, and minimum-rank UFA procedures. The statistic is empirically obtained via intensive simulation based on a two-stage approach. First, a distribution of minimum fit function values is obtained from a scenario in which the null hypothesis of perfect model-data fit holds. Second, the obtained statistic is non-linearly transformed so that it has its first four moments equal to those of the theoretical reference chi-square distribution with the appropriate degrees of freedom. Extensions of the basic statistic are next proposed that include comparative and relative indexes based on it. Tests of close-fit and power assessment derived from the basic statistic are also proposed. peerReviewed publishedVersion
提供机构:
PsychOpen GOLD
创建时间:
2023-11-23



