Evaluating Longitudinal Anchoring Methods for Rasch Models.

Journal of applied measurement Pub Date : 2020-01-01
Tara L Valladares, Karen M Schmidt
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Abstract

Because modern, simultaneously estimated longitudinal Rasch models are unable to handle many timepoints, new methods of producing person and item estimates and evaluating test function are necessary. Longitudinal anchoring, in which a common scale of item parameters is used to estimate trait levels over multiple occasions, is a potential solution. With proper anchoring procedures, person and item estimates can be obtained without limiting the number of timepoints that can be analyzed. A simulation study examining the performance of six longitudinal anchoring methods (Floated, Racked, Time One, Mean, Random, and Stacked) was conducted. The Mean and the Stacked anchoring methods best recovered the population change over time, person and item estimates, and model fit. The Racked method could not produce reliable change estimates and should be avoided. Longitudinal anchoring is an easily implemented solution when analyzing large longitudinal datasets and shows promise as a low-computation method of producing latent trait estimates.

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评价Rasch模型的纵向锚定方法。
由于现代的同时估计的纵向拉希模型无法处理多个时间点,因此需要新的方法来产生人和项目估计和评估测试函数。纵向锚定是一种潜在的解决方案,其中使用一个共同的项目参数量表来估计多个场合的特质水平。通过适当的锚定程序,可以在不限制可以分析的时间点数量的情况下获得人员和项目的估计。对六种纵向锚固方法(浮动锚固、累加锚固、一次锚固、平均锚固、随机锚固和堆叠锚固)的性能进行了仿真研究。均值和堆叠锚定方法最好地恢复了人口随时间的变化,人和项目的估计,以及模型拟合。rack方法不能产生可靠的变更估计,应该避免使用。在分析大型纵向数据集时,纵向锚定是一种易于实现的解决方案,并且有望作为一种低计算量的产生潜在性状估计的方法。
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