A Multi-Dimensional Assessment Model and Its Application in E-learning Courses of Computer Science

Jiwen Luo, Feng Lu, Tao Wang
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引用次数: 2

Abstract

Computer science is a practical discipline. It is always a great challenge to evaluate students' computer practice using computer-aided means for large scale students. We always need to address problems such as suspected plagiarism and deviation of the overall difficulty factor. In this paper, a multi-dimensional assessment model is designed for CS courses based on the detailed practice processing data in an E-learning system. The model comprehensively evaluates the students' learning process and results in three aspects of correctness, originality, and quality detection. Besides, the teacher can easily participate in the assessment according to their needs. The correctness is an essential requirement, and the originality is based on the clustering results of students' behaviors after clone detection to curb homework plagiarism. SonarQube is used to detect code quality and put forward higher requirements for codes. Manual participation intelligence has improved the flexibility and applicability of the model to a certain extent. We applied this model on the EduCoder online education platform and carried out a comprehensive analysis of 485 students in the Parallel Programming Principles and Practice Class of Huazhong University of Science and Technology. Experiment results confirm the distinction, rationality, and fairness of the model in assessing student performance. It not only gives students a credible, comprehensive score in large-scale online practical programming courses but also gives teachers and students corresponding suggestions based on the evaluation results. Furthermore, the model can be extended to other online education platforms.
多维评价模型及其在计算机科学E-learning课程中的应用
计算机科学是一门实践性很强的学科。利用计算机辅助手段对大规模学生的计算机实践进行评估一直是一个巨大的挑战。我们总是需要解决诸如涉嫌抄袭和整体难度系数偏差等问题。本文基于E-learning系统中详细的实践处理数据,设计了CS课程的多维度评价模型。该模型从正确性、原创性和质量检测三个方面对学生的学习过程和结果进行了综合评价。此外,教师可以根据自己的需要轻松参与评估。正确性是必不可少的要求,独创性是基于克隆检测后学生行为的聚类结果来遏制作业抄袭。SonarQube用于检测代码质量,对代码提出了更高的要求。人工参与智能在一定程度上提高了模型的灵活性和适用性。我们将该模型应用于EduCoder在线教育平台,对华中科技大学并行编程原理与实践班的485名学生进行了综合分析。实验结果证实了该模型在评价学生成绩方面的差异性、合理性和公平性。在大型网络编程实践课程中给学生一个可信的、全面的评分,并根据评价结果给师生提出相应的建议。此外,该模型还可以推广到其他在线教育平台。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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