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Proceedings of the 2023 Conference on Innovation and Technology in Computer Science Education V. 1最新文献

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Can Generative Pre-trained Transformers (GPT) Pass Assessments in Higher Education Programming Courses? 生成预训练变形器(GPT)能否通过高等教育编程课程的评估?
Jaromír Šavelka, Arav Agarwal, C. Bogart, Yifan Song, M. Sakr
We evaluated the capability of generative pre-trained transformers (GPT), to pass assessments in introductory and intermediate Python programming courses at the postsecondary level. Discussions of potential uses (e.g., exercise generation, code explanation) and misuses (e.g., cheating) of this emerging technology in programming education have intensified, but to date there has not been a rigorous analysis of the models' capabilities in the realistic context of a full-fledged programming course with diverse set of assessment instruments. We evaluated GPT on three Python courses that employ assessments ranging from simple multiple-choice questions (no code involved) to complex programming projects with code bases distributed into multiple files (599 exercises overall). Further, we studied if and how successfully GPT models leverage feedback provided by an auto-grader. We found that the current models are not capable of passing the full spectrum of assessments typically involved in a Python programming course (<70% on even entry-level modules). Yet, it is clear that a straightforward application of these easily accessible models could enable a learner to obtain a non-trivial portion of the overall available score (>55%) in introductory and intermediate courses alike. While the models exhibit remarkable capabilities, including correcting solutions based on auto-grader's feedback, some limitations exist (e.g., poor handling of exercises requiring complex chains of reasoning steps). These findings can be leveraged by instructors wishing to adapt their assessments so that GPT becomes a valuable assistant for a learner as opposed to an end-to-end solution.
我们评估了生成式预训练转换器(GPT)的能力,以通过高等教育水平的入门和中级Python编程课程的评估。关于这种新兴技术在编程教育中的潜在用途(例如,练习生成,代码解释)和滥用(例如,作弊)的讨论已经加强,但是到目前为止,还没有对模型在具有多种评估工具的成熟编程课程的现实背景下的能力进行严格的分析。我们在三门Python课程中对GPT进行了评估,评估范围从简单的多项选择题(不涉及代码)到复杂的编程项目(代码库分布在多个文件中)(总共599个练习)。此外,我们研究了GPT模型是否以及如何成功地利用自动评分器提供的反馈。我们发现,目前的模型无法通过Python编程课程(55%)中通常涉及的所有评估,无论是入门课程还是中级课程。虽然这些模型表现出了非凡的能力,包括基于自动评分器的反馈修正解决方案,但也存在一些局限性(例如,对需要复杂推理步骤链的练习处理不良)。教师可以利用这些发现来调整他们的评估,使GPT成为学习者的有价值的助手,而不是端到端解决方案。
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引用次数: 19
Proceedings of the 2023 Conference on Innovation and Technology in Computer Science Education V. 1 《2023计算机科学教育创新与技术会议论文集》5 . 1
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引用次数: 0
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Proceedings of the 2023 Conference on Innovation and Technology in Computer Science Education V. 1
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