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Relationship between Student Writing Complexity and Physics Learning in a Text-Based ITS

机译:基于文本的学生写作复杂性和物理学学习的关系

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In this paper we study 2217 essays written during ITS-based physics tutoring. Using output from the Stanford parser, we calculate various simple and more complex linguistic features, including average sentence length, tree height and number of subordinate clauses. Using the WEKA J48 implementation of the C4.5 algorithm and other statistics, we attempt to find relationships between linguistic features, the complexity of the students' text, students' scores on a physics posttest and their learning gain from the tutoring sessions.
机译:在本文中,我们研究了在其基于物理辅导期间写的2217篇论文。使用STANFORD解析器的输出,我们计算各种简单更复杂的语言特征,包括平均句子长度,树高度和从属子数的数量。使用Weka J48的C4.5算法和其他统计数据的实施,我们试图在语言特征之间找到关系,学生文本的复杂性,学生在物理学中的学生评分以及他们的学习收益来自辅导会。

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