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Asymptotically Normally Distributed Person Fit Indices for Detecting Spuriously High Scores on Difficult Items

机译:渐近正态分布人拟合指数用于检测困难项目上的虚假高分

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摘要

Snijders developed a family of person fit indices that asymptotically follow the standard normal distribution, when the ability parameter is estimated. So far, lz*, U*, W*, ECI2z*, and ECI4z* from this family have been proposed in previous literature. One common property shared by lz*, U*, and W* (also ECI2z* and ECI4z* in some specific conditions) is that they employ symmetric weight functions and thus identify spurious scores on both easy and difficult items in the same manner. However, when the purpose is to detect only the spuriously high scores on difficult items, such as cheating, guessing, and having item preknowledge, using symmetric weight functions may jeopardize the detection rates of the target aberrant response patterns. By specifying two types of asymmetric weight functions, this study proposes SHa(λ)* (λ = 1/2 or 1) and SHb(β)* (β = 2 or 3) based on Snijders’s framework to specifically detect spuriously high scores on difficult items. Two simulation studies were carried out to investigate the Type I error rates and empirical power of SHa(λ)* and SHb(β)*, compared with lz*, U*, W*, ECI2z*, and ECI4z*. The empirical results demonstrated satisfactory performance of the proposed indices. Recommendations were also made on the choice of different person fit indices based on specific purposes.
机译:Snijders开发了一个人的适应指数系列,当评估能力参数时,该指数渐近遵循标准正态分布。到目前为止, l z * ,U *,W *,<数学xmlns:mml =“ http://www.w3.org/1998/Math/MathML” id =“ math2-0146621617730391” overflow =“ scroll”> ECI 2 z * ECI 4 z在先前的文献中已经提出了这个家族的 * 。由 l z * ,U *和W *(也 < mrow> ECI 2 z * ECI 4 < mi> z * (在某些特定条件下)是因为它们采用了对称权重函数从而以相同的方式在容易和困难的项目上识别虚假分数。但是,当目的是仅检测困难项目的虚假高分时,例如作弊,猜测和具有项目预知知识时,使用对称权重函数可能会损害目标异常响应模式的检测率。通过指定两种类型的不对称权函数,本研究提出了基于Snijders框架的SHa(λ)*(λ= 1/2或1)和SHb(β)*(β= 2或3),以专门检测虚假的高分困难的物品。与 l z < / mrow> * ,U *,W *, ECI 2 < / mn> z * ,和 ECI 4 z * 。实证结果证明了拟议指标的令人满意的表现。还针对基于特定目的选择不同的人适合指数提出了建议。

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