Factual Question Generation for the Portuguese Language

Bernardo Leite, Henrique Lopes Cardoso, Luís Paulo Reis, Carlos Soares
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引用次数: 3

Abstract

Artificial Intelligence (AI) has seen numerous applications in the area of Education. Through the use of educational technologies such as Intelligent Tutoring Systems (ITS), learning possibilities have increased significantly. One of the main challenges for the widespread use of ITS is the ability to automatically generate questions. Bearing in mind that the act of questioning has been shown to improve the students learning outcomes, Automatic Question Generation (AQG) has proven to be one of the most important applications for optimizing this process. We present a tool for generating factual questions in Portuguese by proposing three distinct approaches. The first one performs a syntax-based analysis of a given text by using the information obtained from Part-of-speech tagging (PoS) and Named Entity Recognition (NER). The second approach carries out a semantic analysis of the sentences, through Semantic Role Labeling (SRL). The last method extracts the inherent dependencies within sentences using Dependency Parsing. All of these methods are possible thanks to Natural Language Processing (NLP) techniques. For evaluation, we have elaborated a pilot test that was answered by Portuguese teachers. The results verify the potential of these different approaches, opening up the possibility to use them in a teaching environment.
葡萄牙语的事实问题生成
人工智能(AI)在教育领域得到了广泛应用。通过使用智能辅导系统(ITS)等教育技术,学习的可能性大大增加。ITS广泛使用的主要挑战之一是自动生成问题的能力。考虑到提问行为已被证明可以提高学生的学习成果,自动问题生成(AQG)已被证明是优化这一过程的最重要的应用之一。我们通过提出三种不同的方法,提出了在葡萄牙语中生成事实问题的工具。第一种方法通过使用从词性标记(PoS)和命名实体识别(NER)获得的信息,对给定文本执行基于语法的分析。第二种方法通过语义角色标注(semantic Role Labeling, SRL)对句子进行语义分析。最后一种方法使用依赖项解析提取句子中的固有依赖项。由于自然语言处理(NLP)技术,所有这些方法都成为可能。为了评估,我们制定了一个试点测试,由葡萄牙语教师回答。结果验证了这些不同方法的潜力,为在教学环境中使用它们提供了可能性。
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