Natural Language Processing (NLP) is one of the most revolutionary technologies today. It uses artificial intelligence to understand human text and spoken words. It is used for text summarization, grammar checking, sentiment analysis, and advanced chatbots and has many more potential use cases. Furthermore, it has also made its mark on the education sector. Much research and advancements have already been conducted on objective question generation; however, automated subjective question generation and answer evaluation are still in progress. An automated system to generate subjective questions and evaluate the answers can help teachers assess student work and enhance the student's learning experience by allowing them to self-assess their understanding after reading an article or a chapter of a book. This research aims to improve current NLP models or make a novel one for automated subjective question generation and answer evaluation from text input.
翻译:自然语言处理(NLP)是当今最具革命性的技术之一。它利用人工智能来理解人类的文本和口语。该技术已应用于文本摘要、语法检查、情感分析以及高级聊天机器人等领域,并拥有更多潜在的应用场景。此外,它也在教育领域产生了重要影响。目前,针对客观题生成已开展了大量研究并取得了诸多进展;然而,自动化的主观题生成与答案评估仍处于发展阶段。一个能够自动生成主观题并评估答案的系统,可以帮助教师评估学生作业,并通过让学生在阅读文章或书籍章节后进行自我评估,从而提升其学习体验。本研究旨在改进现有的NLP模型,或构建一种新颖的模型,以实现从文本输入中自动生成主观题并进行答案评估。