使用Rasch评定量表模型测量多个场合的变化。

Journal of outcome measurement Pub Date : 1999-01-01
E W Wolfe, C W Chiu
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引用次数: 0

摘要

当使用潜在特质模型来测量跨时间的变化时,很难将测量上下文的一个方面的变化与其他方面的变化区分开来。因此,很难诊断变化。Wright (1999b)提出了一种解纠缠变化的算法,之前作者将该算法应用于两种情况下的变化测量(Wolfe和Chiu, 1999)。在本文中,我们将Wright的算法扩展到三种情况下的度量变化。我们描述了一个多场合评估的标准拉西评定量表分析,当受到一系列“单独”校准时,会产生令人困惑的结果。然后,我们将Wright的修正应用于相同的数据,以表明该算法揭示的变化更类似于预期的变化。我们的论证表明,赖特的程序可以减少对拉什评定量表模型的不拟合,并改变测量环境中对变化的解释。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Measuring change across multiple occasions using the Rasch Rating Scale Model.

When latent trait models are used to measure change across time, it is difficult to disentangle changes in one facet of the measurement context from changes in other facets. Hence, it is difficult to diagnose change. Wright (1999b) proposed an algorithm for disentangling change, and previously the authors applied this algorithm to measuring change across two occasions (Wolfe and Chiu, 1999). In this article we extend Wright's algorithm to disentangle changes in measures across three occasions. We describe a standard Rasch rating scale analysis of a multi-occasion evaluation that produces confusing results when subjected to a series of "separate" calibrations. Then, we apply Wright's correction to the same data to show that the algorithm reveals changes that are more similar to ones that would be expected. Our demonstration shows that Wright's procedure can reduce misfit to the Rasch Rating Scale Model as well as changing the interpretation of change within the measurement context.

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