新教师核心能力调查数据的混合Rasch模型分析

Turker Toker, Kent Seidel
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引用次数: 0

摘要

虽然Rasch模型用于测量数据集中存在多个潜在结构的潜在特征,如态度或能力,但最好使用一种称为混合Rasch模型(MRM)的技术,它是Rasch模型和潜在类分析(LCA)的结合。本研究使用的数据来自对教师、教师候选人和教师教育项目教师的调查,样本包括296名候选人、648名毕业生和501名项目人员。基于这些能力的调查项目询问了西部一个州的教师候选人、毕业生和教师教育项目的教师,该项目对教师职业的准备程度如何。这三组调查共有的40个项目被提交给混合Rasch分析,以确定是否有不同的项目反应模式是可辨别的。分析产生了两个类别,这使调查的结构效度受到质疑。结果表明,混合Rasch模型对于调查研究人员确定子群体是有用的。本研究展示了混合拉希模型对调查数据分析的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Mixture Rasch Model Analysis of Data from a Survey of Novice Teacher Core Competencies
Although the Rasch model is used to measure latent traits like attitude or ability where there are multiple latent structures within the dataset it is best to use a technique called the Mixture Rasch Model (MRM) which is a combination of a Rasch model and a latent class analysis (LCA). This study used data from a survey for teachers, teacher candidates, and teacher education program faculty with a sample of 296 candidates, 648 graduates, and 501 program personnel. Survey items based on these competencies asked teacher candidates, graduates, and teacher education program faculty in one Western state how well the program attended prepared candidates for the teaching profession. The 40 items common to surveys of the three groups were submitted to mixture Rasch analysis to determine whether distinct patterns of item response were discernible. Analyses yielded two classes which brings the construct validity of the survey into question. Results showed that the Mixture Rasch Model is and can be useful to determine sub-groups for survey researchers. This research presents a demonstration of usefulness of the Mixture Rasch Model for the analysis of survey data.
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