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Multilevel Latent Class Analysis for Large-Scale Educational Assessment Data: Exploring the Relation Between the Curriculum and Students' Mathematical Strategies

机译:大规模教育评估数据的多层次潜类分析:课程与学生数学策略的关系

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摘要

A first application of multilevel latent class analysis (MLCA) to educational large-scale assessment data is demonstrated. This statistical technique addresses several of the challenges that assessment data offers. Importantly, MLCA allows modeling of the often ignored teacher effects and of the joint inFLuence of teacher and student variables. Using data from the 2011 assessment of Dutch primary schools' mathematics, this study explores the relation between the curriculum as reported by 107 teachers and the strategy choices of their 1,619 students, while controlling for student characteristics. Considerable teacher effects are demonstrated, as well as significant relations between the intended as well as enacted curriculum and students' strategy use. Implications of these results for both more theoretical and practical educational research are discussed, as are several issues in applying MLCA and possibilities for applying MLCA to different types of educational data.
机译:演示了多级潜在类别分析(MLCA)在教育大规模评估数据中的首次应用。这种统计技术解决了评估数据带来的一些挑战。重要的是,MLCA允许对经常被忽略的教师效果以及教师和学生变量的联合影响进行建模。利用2011年荷兰小学数学评估的数据,本研究探索了107名教师报告的课程与其1,619名学生的策略选择之间的关系,同时控制了学生的特征。展示了相当可观的教师效果,以及既定的和已制定的课程与学生的策略使用之间的显着关系。讨论了这些结果对更多理论和实践教育研究的意义,以及应用MLCA的几个问题以及将MLCA应用于不同类型的教育数据的可能性。

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