使用项目均方来评估与Rasch模型的拟合。

Journal of outcome measurement Pub Date : 1998-01-01
R M Smith, R E Schumacker, M J Bush
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引用次数: 0

摘要

在20世纪70年代中后期,人们对拉希拟合均方的性质进行了大量的研究。这项工作在将均方转换为近似t统计量的各种转换中达到高潮。这项工作的主要动机是样本量对均方大小的影响,以及希望有一个通常可应用于大多数情况的单一临界值。在20世纪80年代末和90年代初,随着许多研究人员使用未变换的拟合均方作为检验Rasch测量模型拟合的手段,趋势似乎已经逆转。主要动机被引用为样本量对t转换均方的灵敏度的影响。本文的目的是介绍这些拟合指数和各种变换的历史发展,并检查样本量对拟合均方和这些均方的t变换的影响。由于样本量问题对人均方问题的影响较小,由于样本量的长度相对较短(100个或更少),因此本文主要关注项目拟合均方,其中通常会发现样本量在30到10,000之间使用的统计量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using item mean squares to evaluate fit to the Rasch model.

Throughout the mid to late 1970's considerable research was conducted on the properties of Rasch fit mean squares. This work culminated in a variety of transformations to convert the mean squares into approximate t-statistics. This work was primarily motivated by the influence sample size has on the magnitude of the mean squares and the desire to have a single critical value that can generally be applied to most cases. In the late 1980's and the early 1990's the trend seems to have reversed, with numerous researchers using the untransformed fit mean squares as a means of testing fit to the Rasch measurement models. The principal motivation is cited as the influence sample size has on the sensitivity of the t-converted mean squares. The purpose of this paper is to present the historical development of these fit indices and the various transformations and to examine the impact of sample size on both the fit mean squares and the t-transformations of those mean squares. Because the sample size problem has little influence on the person mean square problem, due to the relatively short length (100 items or less), this paper focuses on the item fit mean squares, where it is common to find the statistics used with sample sizes ranging from 30 to 10,000.

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