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Stratified Item Selection and Exposure Control in Unidimensional Adaptive Testing in the Presence of Two-Dimensional Data

机译:二维数据存在下一维自适应测试中的分层项选择和暴露控制

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摘要

It is not uncommon to use unidimensional item response theory models to estimate ability in multidimensional data with computerized adaptive testing (CAT). The current Monte Carlo study investigated the penalty of this model misspecification in CAT implementations using different item selection methods and exposure control strategies. Three item selection methods--maximum information (MAXI), a-stratification (STRA), and a-stratification with b-blocking (STRB) with and without Sympson-Hetter (SH) exposure control strategy--were investigated. Calibrating multidimensional items as unidimensional items resulted in inaccurate item parameter estimates. Therefore, MAXI performed better than STRA and STRB in estimating the ability parameters. However, all three methods had relatively large standard errors. SH exposure control had no impact on the number of overexposed items. Existing unidimensional CAT implementations might consider using MAXI only if recalibration as multidimensional model is too expensive. Otherwise, building a CAT pool by calibrating multidimensional data as unidimensional is not recommended.
机译:使用一维项目响应理论模型通过计算机自适应测试(CAT)估计多维数据中的能力并不少见。当前的蒙特卡洛研究使用不同的项目选择方法和暴露控制策略,研究了在CAT实施中此模型错误指定的惩罚。研究了三种项目选择方法-最大信息(MAXI),a分层(STRA)和带有b-blocking的a分层(STRB)(有和没有Sympson-Hetter(SH)暴露控制策略)。将多维项目校准为一维项目会导致不正确的项目参数估计。因此,在估计能力参数方面,MAXI的表现优于STRA和STRB。但是,这三种方法都有相对较大的标准误差。 SH接触控制对接触过度的项目数量没有影响。现有的一维CAT实现可能仅在由于多维模型的重新校准过于昂贵而考虑使用MAXI。否则,不建议通过将多维数据校准为一维来构建CAT池。

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