An Analysis of Programming Course Evaluations Before and After the Introduction of an Autograder

Gerhard Johann Hagerer, Laura Lahesoo, Miriam Anschütz, Stephan Krusche, Georg Groh
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引用次数: 1

Abstract

Commonly, introductory programming courses in higher education institutions have hundreds of participating students eager to learn to program. The manual effort for reviewing the submitted source code and for providing feedback can no longer be managed. Manually reviewing the submitted homework can be subjective and unfair, particularly if many tutors are responsible for grading. Different autograders can help in this situation; however, there is a lack of knowledge about how autograders can impact students' overall perception of programming classes and teaching. This is relevant for course organizers and institutions to keep their programming courses attractive while coping with increasing students. This paper studies the answers to the standardized university evaluation questionnaires of multiple large-scale foundational computer science courses which recently introduced autograding. The differences before and after this intervention are analyzed. By incorporating additional observations, we hypothesize how the autograder might have contributed to the significant changes in the data, such as, improved interactions between tutors and students, improved overall course quality, improved learning suc-cess, increased time spent, and reduced difficulty. This qualitative study aims to provide hypotheses for future research to define and conduct quantitative surveys and data analysis. The autograder technology can be validated as a teaching method to improve student satisfaction with programming courses.
引入Autograder前后的程序设计课程评价分析
通常,高等教育机构的编程入门课程有数百名渴望学习编程的学生参加。审查提交的源代码和提供反馈的手工工作将不再被管理。手工检查提交的作业可能是主观和不公平的,特别是如果许多导师负责评分。在这种情况下,不同的自动分级器可以提供帮助;然而,对于自动评分系统如何影响学生对编程课程和教学的整体看法,人们缺乏了解。这与课程组织者和机构在应对不断增加的学生的同时保持编程课程的吸引力有关。本文对近年来引入自动评分的高校多门大型计算机基础课程标准化评价问卷的回答进行了研究。分析干预前后的差异。通过结合额外的观察,我们假设自动评分器可能对数据的重大变化做出了贡献,例如,改善了导师和学生之间的互动,提高了整体课程质量,提高了学习成功率,增加了花费的时间,降低了难度。本定性研究旨在为未来的研究提供假设,以定义并进行定量调查和数据分析。自动评分技术可以作为一种教学方法来提高学生对编程课程的满意度。
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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