首页> 外文期刊>Mathematiques et Sciences Humaines (Print) >Differential item functioning detection with logistic regression
【24h】

Differential item functioning detection with logistic regression

机译:逻辑回归的差异项功能检测

获取原文
       

摘要

Logistic regression has been used as a method for identifying differential item functioning (DIF) in different contexts. Some studies have shown that DIF detection through this procedure may be affected by variables such as sample size ratio, and sample size. It also seems related to specific item parameters like certain ranges of difficulty and discrimination [Herrera, 2005 ; Santana 2009]. We made a simulation study with four partially crossed independent variables which resulted in 270 conditions and simulated 200 replications for each experimental condition. McFadden’s distance R2 between models (R2?) was used as an effect size measure and as a dependent variable in order to minimize type I and II errors that the statistical test would not have been able to control. We used linear models to define which variables affected the effect size measures : R2? for detecting items with uniform DIF (DRU) and for detecting items with non uniform DIF (DRN). The results show that manipulated variables and some of their interactions affect DRU and DRN differently. We also obtained cut-off points, both for DRU and DRN, for several levels of the variables that affect the R2? measures.
机译:Logistic回归已用作在不同情况下识别差异项功能(DIF)的方法。一些研究表明,通过此过程进行的DIF检测可能会受到诸如样本大小比率和样本大小之类的变量的影响。它似乎也与特定的项目参数有关,例如某些难度和歧视范围[Herrera,2005;桑塔纳2009]。我们使用四个部分交叉的独立变量进行了模拟研究,得出了270个条件,并为每个实验条件模拟了200个重复。麦克法登模型之间的距离R2(R2?)被用作效果大小量度和因变量,以最大程度地减少统计检验无法控制的I型和II型误差。我们使用线性模型来定义哪些变量影响效果量度:R2?用于检测具有统一DIF(DRU)的项目以及用于检测具有非统一DIF(DRN)的项目。结果表明,受控变量及其某些相互作用对DRU和DRN的影响不同。我们还获得了影响R2的几个变量级别的DRU和DRN的临界点。措施。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号