题库信息不统一时计算机自适应测试的停止规则

IF 1 Q2 SOCIAL SCIENCES, INTERDISCIPLINARY
S. Morris, Mike Bass, Elizabeth Howard, R. Neapolitan
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引用次数: 5

摘要

标准误差(SE)停止规则,当SE小于阈值时终止计算机自适应测试(CAT),在所有性状水平都存在信息性问题时有效。然而,在诸如患者报告结果等领域,信息库中的项目可能都针对特征连续体的一端(例如,阴性症状),并且信息库可能对许多个体缺乏深度。在这种情况下,即使没有达到SE阈值,预测的标准错误减少(PSER)停止规则也会停止CAT,并且可以避免管理提供很少额外信息的过多问题。通过调优PSER算法的参数,从业者可以在准确性和效率之间指定理想的权衡。使用患者报告结果测量信息系统焦虑和身体功能库的模拟数据,我们证明这些参数可以显著影响CAT的表现。当参数被优化后,发现PSER停止规则总体上优于SE停止规则,特别是对于非银行目标的个体,并且在特征连续体中呈现大致相同数量的项目。因此,PSER停止规则为平衡CAT的精度和效率提供了一种有效的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stopping Rules for Computer Adaptive Testing When Item Banks Have Nonuniform Information
The standard error (SE) stopping rule, which terminates a computer adaptive test (CAT) when the SE is less than a threshold, is effective when there are informative questions for all trait levels. However, in domains such as patient-reported outcomes, the items in a bank might all target one end of the trait continuum (e.g., negative symptoms), and the bank may lack depth for many individuals. In such cases, the predicted standard error reduction (PSER) stopping rule will stop the CAT even if the SE threshold has not been reached and can avoid administering excessive questions that provide little additional information. By tuning the parameters of the PSER algorithm, a practitioner can specify a desired tradeoff between accuracy and efficiency. Using simulated data for the Patient-Reported Outcomes Measurement Information System Anxiety and Physical Function banks, we demonstrate that these parameters can substantially impact CAT performance. When the parameters were optimally tuned, the PSER stopping rule was found to outperform the SE stopping rule overall, particularly for individuals not targeted by the bank, and presented roughly the same number of items across the trait continuum. Therefore, the PSER stopping rule provides an effective method for balancing the precision and efficiency of a CAT.
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来源期刊
International Journal of Testing
International Journal of Testing SOCIAL SCIENCES, INTERDISCIPLINARY-
CiteScore
3.60
自引率
11.80%
发文量
13
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