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Differential item functioning identification strategy for items with dichotomous responses using the item information curve: A weighted area method (WAM)

机译:使用物料信息曲线对具有二分响应的物料进行差异物料功能识别的策略:加权面积法(WAM)

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摘要

Frequently researchers base their decisions and interpretations on conclusions drawn from data analyses, but what happens when the data used in the analyses are collected from unreliable instruments or surveys? The instrument may include a particular question that invokes different interpretations based on group membership, thereby placing one of the two groups at an unfair disadvantage. Another challenge occurs when the size of the sample under investigation (i.e., number of respondents or participants) is unavoidably small, adding more uncertainty to parameter estimates. Over the past 50 years, researchers have suggested many different approaches for identifying problematic questions (i.e., items that are biased), but no consensus has been reached as to which method is best. In addition, selecting appropriate methods becomes even more challenging when smaller sample sizes are involved (Lai, Teresi, & Gershon, 2005). This dissertation presents the findings of a study introducing a new method for identifying DIF and potentially biased items. The study explored the use of the Item Information Curve (IIC) as a weighting strategy (i.e., Weighted Area Method -- WAM) to the area between Item Characteristic Curves (ICC) as a way to identify problematic questions. Through thousands of simulations, the performance of WAM was compared to two other commonly used methods for detecting DIF -- the Mantel-Haenszel approach (Mantel & Haenszel, 1959) and the Rudner's Area method (Rudner, 1977). The results show the effects of sample size variations on identifying modeled DIF items, and the opportunity for future Differential Item Functioning (DIF) analyses using WAM.
机译:研究人员经常根据从数据分析得出的结论做出决定和解释,但是当从不可靠的工具或调查中收集分析中使用的数据时会发生什么呢?文书可能包括一个特定的问题,该问题会基于组成员资格调用不同的解释,从而使两个组之一处于不公平的不利地位。当被调查样本的大小(即受访者或参与者的数量)不可避免地很小时,会给参数估计增加更多不确定性,这将带来另一个挑战。在过去的50年中,研究人员提出了许多不同的方法来识别有问题的问题(即有偏见的项目),但是对于哪种方法最好则尚未达成共识。此外,当涉及较小的样本量时,选择适当的方法变得更具挑战性(Lai,Teresi和&Gershon,2005)。本文介绍了一项研究的发现,该研究引入了一种新的方法来识别DIF和潜在有偏见的项目。该研究探索了使用项目信息曲线(IIC)作为项目特征曲线(ICC)之间区域的加权策略(即加权面积法-WAM),以识别有问题的问题。通过数千次仿真,将WAM的性能与其他两种检测DIF的常用方法进行了比较-Mantel-Haenszel方法(Mantel&Haenszel,1959年)和Rudner's Area方法(Rudner,1977年)。结果显示样本大小变化对识别建模的DIF项目的影响,以及将来使用WAM进行差异项目功能(DIF)分析的机会。

著录项

  • 作者

    Siebert, Carl F.;

  • 作者单位

    The Florida State University.;

  • 授予单位 The Florida State University.;
  • 学科 Statistics.;Educational tests measurements.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 358 p.
  • 总页数 358
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:41:35

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