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Maximum Likelihood Score Estimation Method With Fences for Short-Length Tests and Computerized Adaptive Tests

机译:带有围栏的最大似然评分估计方法用于短期测试和计算机自适应测试

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摘要

A critical shortcoming of the maximum likelihood estimation (MLE) method for test score estimation is that it does not work with certain response patterns, including ones consisting only of all 0s or all 1s. This can be problematic in the early stages of computerized adaptive testing (CAT) administration and for tests short in length. To overcome this challenge, test practitioners often set lower and upper bounds of theta estimation and truncate the score estimation to be one of those bounds when the log likelihood function fails to yield a peak due to responses consisting only of 0s or 1s. Even so, this MLE with truncation (MLET) method still cannot handle response patterns in which all harder items are correct and all easy items are incorrect. Bayesian-based estimation methods such as the modal a posteriori (MAP) method or the expected a posteriori (EAP) method can be viable alternatives to MLE. The MAP or EAP methods, however, are known to result in estimates biased toward the center of a prior distribution, resulting in a shrunken score scale. This study introduces an alternative approach to MLE, called MLE with fences (MLEF). In MLEF, several imaginary fence items with fixed responses are introduced to form a workable log likelihood function even with abnormal response patterns. The findings of this study suggest that, unlike MLET, the MLEF can handle any response patterns and, unlike both MAP and EAP, results in score estimates that do not cause shrinkage of the theta scale.
机译:用于测试分数估计的最大似然估计(MLE)方法的一个关键缺点是它不适用于某些响应模式,包括仅由全0或全1组成的响应模式。在计算机化自适应测试(CAT)管理的早期阶段以及长度较短的测试中,这可能会出现问题。为了克服这一挑战,当对数似然函数由于仅包含0或1s的响应而无法产生峰值时,测试从业人员通常会设置theta估计的上下边界,并将分数估计截断为那些边界之一。即使这样,带有截断(MLET)的MLE方法仍然无法处理所有较难的项目都是正确的而所有较易的项目都不正确的响应模式。基于贝叶斯的估计方法(例如模态后验(MAP)方法或预期后验(EAP)方法)可能是MLE的可行替代方法。但是,已知MAP或EAP方法会导致估计偏向于先验分布的中心,从而导致评分尺度缩小。本研究介绍了MLE的另一种方法,称为带栅栏的MLE(MLEF)。在MLEF中,引入了几个具有固定响应的虚构栅栏项,以形成具有异常响应模式的可行对数似然函数。这项研究的结果表明,与MLET不同,MLEF可以处理任何响应模式,并且与MAP和EAP不同,MLEF的得分估计不会导致theta规模缩小。

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