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The missing data assumptions of the NEAT design and their implications for test Equating

机译:NEAT设计的缺失数据假设及其对测试等价的含义

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The Non-Equivalent groups with Anchor Test (NEAT) design involves missingdata that are missing by design. Three nonlinear observed score equating methods used with a NEAT design are the frequency estimation equipercentile equating (FEEE), the chain equipercentile equating (CEE), and the item-response-theory observed-score-equating (IRT OSE). These three methods each make different assumptions about the missing data in the NEAT design. The FEEE method assumes that the conditional distribution of the test score given the anchor test score is the same in the two examinee groups. The CEE method assumes that the equipercentile functions equating the test score to the anchor test score are the same in the two examinee groups. The IRT OSE method assumes that the IRT model employed fits the data adequately, and the items in the tests and the anchor test do not exhibit differential item functioning across the two examinee groups. This paper first describes the missing data assumptions of the three equating methods. Then it describes how the missing data in the NEAT design can be filled in a manner that is coherent with the assumptions made by each of these equating methods. Implications on equating are also discussed.
机译:具有锚定测试(NEAT)设计的非等效组涉及设计所缺少的缺少数据。 NEAT设计中使用的三种非线性观测分数等值方法是频率估计等分方程(FEEE),链等分等值(CEE)和项目响应理论的观测分数等值(IRT OSE)。这三种方法都对NEAT设计中的缺失数据做出了不同的假设。 FEEE方法假定给定锚定测试分数的测试分数的条件分布在两个受检者组中相同。 CEE方法假定在两个受检者组中,将测试分数等同于锚定测试分数的等分函数是相同的。 IRT OSE方法假定所使用的IRT模型足以拟合数据,并且测试和锚定测试中的项目在两个受检者组之间均未显示出不同的项目功能。本文首先描述了三种等价方法的缺失数据假设。然后,它描述了如何以与这些等价方法中的每一种均相一致的方式填充NEAT设计中的缺失数据。还讨论了对等式的含义。

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