首页> 外文期刊>Educational and Psychological Measurement >Mixture IRT Model With a Higher-Order Structure for Latent Traits
【24h】

Mixture IRT Model With a Higher-Order Structure for Latent Traits

机译:混合IRT模型具有更高阶结构的潜在特征

获取原文
获取原文并翻译 | 示例
       

摘要

Mixture item response theory (IRT) models have been suggested as an efficient method of detecting the different response patterns derived from latent classes when developing a test. In testing situations, multiple latent traits measured by a battery of tests can exhibit a higher-order structure, and mixtures of latent classes may occur on different orders and influence the item responses of examinees from different classes. This study aims to develop a new class of higher-order mixture IRT models by integrating mixture IRT models and higher-order IRT models to address these practical concerns. The proposed higher-order mixture IRT models can accommodate both linear and nonlinear models for latent traits and incorporate diverse item response functions. The Rasch model was selected as the item response function, metric invariance was assumed in the first simulation study, and multiparameter IRT models without an assumption of metric invariance were used in the second simulation study. The results show that the parameters can be recovered fairly well using WinBUGS with Bayesian estimation. A larger sample size resulted in a better estimate of the model parameters, and a longer test length yielded better individual ability recovery and latent class membership recovery. The linear approach outperformed the nonlinear approach in the estimation of first-order latent traits, whereas the opposite was true for the estimation of the second-order latent trait. Additionally, imposing identical factor loadings between the second- and first-order latent traits by fitting the mixture bifactor model resulted in biased estimates of the first-order latent traits and item parameters. Finally, two empirical analyses are provided as an example to illustrate the applications and implications of the new models.
机译:已经提出了混合物项目响应理论(IRT)模型作为在开发测试时检测潜伏等级的不同响应模式的有效方法。在测试情况下,通过电池测试测量的多个潜在特征可以表现出更高阶结构,并且可以在不同的订单上发生潜在的类别的混合物,并影响来自不同类别的考生的项目响应。本研究旨在通过整合混合IRT模型和高阶IRT模型来解决这些实际问题的新类别的高阶混合IRT模型。所提出的高阶混合IRT模型可以适应潜在特征的线性和非线性模型,并包含各种项目响应功能。选择RASCH模型作为项目响应函数,在第一个仿真研究中假设度量不变性,并且在第二仿真研究中使用了没有假设度量不变性的Multiparameter IRT模型。结果表明,使用具有贝叶斯估计的Winbugs可以很好地恢复参数。更大的样本量导致模型参数的更好估计,并且更长的测试长度产生了更好的个人能力恢复和潜在的课程成员恢复。线性方法在估计一阶潜在特征的估计中表现出非线性方法,而相反是为了估计二阶潜在特征。另外,通过拟合混合双接触器模型,在第二和一阶潜在的特征之间施加相同的因子加载,从而导致一阶潜在特征和项目参数的偏置估计。最后,提供了两个实证分析作为示例以说明新模型的应用和含义。

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