基于Bloom分类法的印尼语问题生成

Selvia Ferdiana Kusuma, Rinanza Zulmy Alhamri, D. Siahaan, C. Fatichah, M. F. Naufal
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引用次数: 3

摘要

文本问题生成的自动化是近年来研究的热点之一。在教育领域,问题生成可用于协助生成问题,以作为学习成果的评估。手动生成不同难度等级的问题的过程并不容易。首先,有人必须了解整个事情,然后她或他能够根据材料提出问题。生成大量的问题和各种各样的学习材料当然需要大量的精力和时间。因此,有必要自动化生成问题的过程。本文介绍了基于文本分析的Bloom分类法的问题自动生成方法。该方法的准确率为81.35%。结果表明,该方法可以实现问题的自动生成
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Indonesian Question Generation Based on Bloom's Taxonomy Using Text Analysis
Automation of question generation from a text has been one of the focus of research in recent years. In the education field, question generation can be used to assist in the generation of questions to be used as evaluations of learning outcomes. The process of generating questions with different difficulty levels manually is not easy. Firstly, someone must understand the whole matter and then she or he is able to make questions according to the material. Generation of questions in large quantities and various learning materials will certainly require lot of effort and time. Therefore, it is necessary to automate the process of generating the question. This research introduces question generation automation methods based on Bloom's Taxonomy using text analysis. The method proposed in this study yielded an accuracy of 81.35%. The accuracy proves that the proposed method can be used to generate questions automatically
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