数据驱动的熟练程度分析:概念的证明

B. Mostafavi, T. Barnes
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引用次数: 6

摘要

数据驱动的方法以前已用于智能辅导系统,以提高学生的学习成果和预测学生的学习方法。我们一直在将数据驱动的反馈和问题选择方法整合到Deep Thought中,这是一个逻辑导师,学生可以在这里练习构建演绎逻辑证明。在这项最新的研究中,我们已经将数据驱动的熟练度分析器(DDPP)实现到Deep Thought中,作为概念的证明。DDPP在没有专家参与的情况下,通过将相关学生规则分数与之前在导师中表现相似并成功完成的学生进行比较,来确定学生的熟练程度。结果表明,在附加数据的帮助下,DDPP确实提高了性能,证明了这是一个有效的概念验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-driven proficiency profiling: proof of concept
Data-driven methods have previously been used in intelligent tutoring systems to improve student learning outcomes and predict student learning methods. We have been incorporating data-driven methods for feedback and problem selection into Deep Thought, a logic tutor where students practice constructing deductive logic proofs. In this latest study we have implemented our data-driven proficiency profiler (DDPP) into Deep Thought as a proof of concept. The DDPP determines student proficiency without expert involvement by comparing relevant student rule scores to previous students who behaved similarly in the tutor and successfully completed it. The results show that the DDPP did improve in performance with additional data and proved to be an effective proof of concept.
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