Education Testing System by Artificial Intelligence

A. E. Ryabinin
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Abstract

The article describes the possibilities of using and modifying existing machine learning technologies in the field of natural language processing for the purpose of designing a system for automatically generating control and test tasks (CTT). The reason for such studies was the limitations in generating theminimumrequired amount ofCTtomaintain student engagement in game-based learning formats, such as quizzes, and others. These limitations are associated with the lack of time resources among training professionals for manual generation of tests. The article discusses the applied research of the Large Language Model (LLM) and Generative pre-trained transformer (GPT) technologies for the development of a system for automatic generation of tests for the purpose of its implementation in the BoxBattle gamified learning platform. The result of such applied research can be a system for automatic generation of tests, which will reduce the time for developing tests. As a result, this will allow teachers to free up time to implement a personalized approach to teaching and develop students’soft skills.
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人工智能教育测试系统
文章介绍了在自然语言处理领域使用和修改现有机器学习技术的可能性,目的是设计一个自动生成控制和测试任务(CTT)的系统。开展此类研究的原因是,在生成最低数量的控制和测试任务(CTT)以保持学生参与游戏式学习(如测验等)方面存在局限性。这些局限性与培训专业人员缺乏手动生成测试的时间资源有关。本文讨论了大语言模型(LLM)和预训练生成转换器(GPT)技术在开发自动生成测试系统方面的应用研究,该系统将在 BoxBattle 游戏化学习平台中实施。这种应用研究的成果可以是一个自动生成测试的系统,它将减少开发测试的时间。这样,教师就可以腾出时间,实施个性化教学,培养学生的软技能。
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