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Mathematical learning models that depend on prior knowledge and instructional strategies

机译:数学学习模型,依赖于先前的知识和教学策略

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We present mathematical learning modelsa€”predictions of studenta€?s knowledge vs amount of instructiona€”that are based on assumptions motivated by various theories of learning: tabula rasa, constructivist, and tutoring. These models predict the improvement (on the post-test) as a function of the pretest score due to intervening instruction and also depend on the type of instruction. We introduce a connectedness model whose connectedness parameter measures the degree to which the rate of learning is proportional to prior knowledge. Over a wide range of pretest scores on standard tests of introductory physics concepts, it fits high-quality data nearly within error. We suggest that data from MIT have low connectedness (indicating memory-based learning) because the test used the same context and representation as the instruction and that more connected data from the University of Minnesota resulted from instruction in a different representation from the test.
机译:我们呈现数学学习模型€“预测学生的知识与指令委员会的数量,这是基于各种学习理论的假设:Tabula Rasa,建构主义和辅导。这些模型预测了由于中介指令而预测得分的改进(在后测试),并且还取决于指令的类型。我们介绍了一个连通模型,其连接参数测量学习速度与先前知识成比例的程度。在介绍物理概念的标准测试中的广泛预测试评分,它几乎在错误内适合高质量的数据。我们建议,来自麻省理工学院的数据具有低连接度(指示基于内存的学习),因为测试使用与指令相同的上下文和表示以及Minnesota大学的连接数据从测试中的指令中导致了来自测试的指令。

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