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Correlation of Grade Prediction Performance with Characteristics of Lesson Subject

机译:成绩预测表现与课程主题特征的相关性

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Learning analytics is valuable sources of understanding students' behavior and giving feedback to them so that we can improve their learning activities. Analyzing comment data written by students after each lesson helps to grasp their learning attitudes and situations. They can be a powerful source of data for all forms of assessment. In the current study, we break down student comments into different topics by employing two topic models: Probabilistic Latent Semantic Analysis (PLSA), and Latent Dirichlet Allocation (LDA), to discover the topics that help to predict final student grades as their performance. The objectives of this paper are twofold: First, determine how the three time-series items: P-, C- and N-comments and the difficulty of a subject affect the prediction results of final student grades. Second, evaluate the reliability of predicting student grades by considering the differences between prediction results of two consecutive lessons. The results obtained can help to understand student behavior during the period of the semester, grasp prediction error occurred in each lesson, and achieve further improvement of the student grade prediction.
机译:学习分析是了解学生行为并向他们提供反馈的宝贵资源,因此我们可以改善他们的学习活动。分析每节课后学生编写的评论数据有助于掌握他们的学习态度和情况。它们可以成为所有评估形式的强大数据来源。在当前的研究中,我们通过采用两种主题模型将学生的评论分解为不同的主题:概率潜在语义分析(PLSA)和潜在狄利克雷分配(LDA),以发现有助于预测最终学生成绩作为其表现的主题。本文的目标有两个:首先,确定三个时间序列项:P-,C-和N-注释以及科目的难度如何影响最终学生成绩的预测结果。其次,通过考虑两个连续课程的预测结果之间的差异来评估预测学生成绩的可靠性。获得的结果可以帮助理解学期的学生行为,掌握每节课中出现的预测错误,并进一步提高学生的成绩预测。

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