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On Computing the Key Probability in the Stochastically Curtailed Sequential Probability Ratio Test

机译:随机缩减顺序概率比检验中关键概率的计算

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The Stochastically Curtailed Sequential Probability Ratio Test (SCSPRT) is a termination criterion for computerized classification tests (CCTs) that has been shown to be more efficient than the well-known Sequential Probability Ratio Test (SPRT). The performance of the SCSPRT depends on computing the probability that at a given stage in the test, an examinee's current interim classification status will not change before the end of the test. Previous work discusses two methods of computing this probability, an exact method in which all potential responses to remaining items are considered and an approximation based on the central limit theorem (CLT) requiring less computation. Generally, the CLT method should be used early in the test when the number of remaining items is large, and the exact method is more appropriate at later stages of the test when few items remain. However, there is currently a dearth of information as to the performance of the SCSPRT when using the two methods. For the first time, the exact and CLT methods of computing the crucial probability are compared in a simulation study to explore whether there is any effect on the accuracy or efficiency of the CCT. The article is focused toward practitioners and researchers interested in using the SCSPRT as a termination criterion in an operational CCT.
机译:随机缩减序贯概率比测试(SCSPRT)是计算机分类测试(CCT)的终止标准,已被证明比众所周知的序贯概率比测试(SPRT)更有效。 SCSPRT的性能取决于计算在测试的给定阶段,考生当前的临时分类状态在测试结束之前不会改变的概率。先前的工作讨论了两种计算此概率的方法,一种是精确的方法,其中考虑了对剩余项目的所有潜在响应,另一种是基于中心极限定理(CLT)的近似方法,需要较少的计算。通常,当剩余项目数很大时,应在测试的早期阶段使用CLT方法,而在测试的后期阶段,如果剩余项目很少,则应使用确切的方法。但是,在使用这两种方法时,目前缺少有关SCSPRT性能的信息。首次在模拟研究中比较了计算关键概率的精确方法和CLT方法,以探讨是否对CCT的准确性或效率有影响。本文的重点是对有兴趣将SCSPRT用作可操作CCT中的终止标准的从业人员和研究人员。

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