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Person Proficiency Estimates in the Dichotomous Rasch Model When Random Guessing Is Removed From Difficulty Estimates of Multiple Choice Items

机译:从多项选择题的难度估计中删除随机猜测后的二分法Rasch模型中的人员能力估计

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摘要

Andrich, Marais, and Humphry showed formally that Waller's procedure that removes responses to multiple choice (MC) items that are likely to be guessed eliminates the bias in the Rasch model (RM) estimates of difficult items and makes them more difficult. The former did not study any consequences on the person proficiency estimates. This article shows that when the procedure is applied, the more proficient persons who are least likely to guess benefit by a greater amount than the less proficient, who are most likely to guess. This surprising result is explained by appreciating that the more proficient persons answer difficult items correctly at a greater rate than do the less proficient, even when the latter guess some items correctly. As a consequence, increasing the difficulty of the difficult items benefits them more than the less proficient persons. Analyses of a simulated and real example are shown illustratively. To not disadvantage the more proficient persons, it is suggested that Waller's procedure be used when the RM is used to analyze MC items.
机译:Andrich,Marais和Humphry正式表明,Waller的程序消除了对可能被猜到的多项选择(MC)项的响应,从而消除了Rasch模型(RM)对困难项目的估计中的偏差,并使它们更加困难。前者没有研究对个人能力估计的任何影响。本文显示,当应用该程序时,最熟练的人(最不可能猜测)比最不熟练的人(受益最多)受益更大。令人惊讶的结果是通过理解,即使熟练的人正确猜出某些项目,熟练的人也比熟练的人以较高的比率正确地回答困难的项目。结果,增加困难物品的难度比不熟练的人更多。示意性地示出了模拟和真实示例的分析。为了不使能力更强的人员处于不利地位,建议在使用RM分析MC项目时使用Waller程序。

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