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Estimating Grades from Students' Behaviors in Programming Exercises Using Deep Learning

机译:深入学习估算学生行为中学生行为的成绩

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Programming exercises are time-consuming activities for many students. Therefore, many classes provide meticulous support for students through teaching assistants (TAs). However, individual students' programming behaviors are quite different from each other's, even when they are solving the same problem. It can be hard for TAs to understand the unique features of each student's programming behavior. We have used data mining to analyze students' programming behaviors in order to identify their various features. The purpose of this study is to present such behavioral features to TAs to improve the effectiveness of the assistance they can provide. In order to grasp the timing of guidance, we estimated the grades from the history of programming behavior.
机译:编程练习是许多学生的耗时的活动。因此,许多课程通过教学助理(TAS)为学生提供了一丝不苟的支持。然而,即使在解决同样的问题时,个人学生的编程行为也与彼此完全不同。 TA可能很难了解每个学生编程行为的独特功能。我们使用数据挖掘来分析学生的编程行为,以确定其各种功能。本研究的目的是向TAS提供此类行为特征,以提高他们可以提供的援助的有效性。为了掌握指导的时间,我们估计了从编程行为的历史的成绩。

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