...
首页> 外文期刊>Language Testing in Asia >Rasch testlet model and bifactor analysis: how do they assess the dimensionality of large-scale Iranian EFL reading comprehension tests?
【24h】

Rasch testlet model and bifactor analysis: how do they assess the dimensionality of large-scale Iranian EFL reading comprehension tests?

机译:Rasch Testlet模型和双手分析:如何评估大型伊朗EFL阅读理解测试的维度的维度?

获取原文
   

获取外文期刊封面封底 >>

       

摘要

Rasch testlet and bifactor models are two measurement models that could deal with local item dependency (LID) in assessing the dimensionality of reading comprehension testlets. This study aimed to apply the measurement models to real item response data of the Iranian EFL reading comprehension tests and compare the validity of the bifactor models and corresponding item parameters with unidimensional and multidimensional Rasch models. The data collected from the EFL reading comprehension section of the Iranian national university entrance examinations from 2016 to 2018. Various advanced packages of the R system were employed to fit the Rasch unidimensional, multidimensional, and testlet models and the exploratory and confirmatory bifactor models. Then, item parameters estimated and testlet effects identified; moreover, goodness of fit indices and the item parameter correlations for the different models were calculated. Results showed that the testlet effects were all small but non-negligible for all of the EFL reading testlets. Moreover, bifactor models were superior in terms of goodness of fit, whereas exploratory bifactor model better explained the factor structure of the EFL reading comprehension tests. However, item difficulty parameters in the Rasch models were more consistent than the bifactor models. This study had substantial implications for methods of dealing with LID and dimensionality in assessing reading comprehension with reference to the EFL testing.
机译:RASCH TATELET和BIFACTOR型号是两个测量模型,可以处理当地项目依赖(盖子)评估阅读理解测试的维度。本研究旨在将测量模型应用于伊朗EFL阅读理解测试的真实物品响应数据,并比较双层模型和相应项目参数的有效性和多维和多维rasch模型。从2016年至2018年从伊朗国家大学入学考试中收集的数据从2016到2018年开始。r系统的各种先进软件包是符合Rasch非倾向,多维和试验模型以及探索性和验证的双手模型。然后,估计项目参数估计和测试效果;此外,计算了拟合指数的良好和不同模型的项目参数相关性。结果表明,对于所有EFL阅读测试,Testlet效果都很小,但不可能忽略不计。此外,在贴合的良好方面,双层运动器型号优越,而探索性双移位器模型更好地解释了EFL阅读理解测试的因子结构。但是,RASCH模型中的项目难度参数比双层模型更加一致。该研究对处理盖子和维度的方法具有重要意义,以便在评估EFL测试中评估阅读理解。

著录项

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