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Machine Learning Approach to the Process of Question Generation

机译:机器学习方法在问题生成过程中的作用

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In this paper, we introduce an interactive approach to generation of factual questions from unstructured text. Our proposed framework transforms input text into structured set of features and uses them for question generation. Its learning process is based on combination of machine learning techniques known as reinforcement learning and supervised learning. Learning process starts with initial set of pairs formed by declarative sentences and assigned questions and it continuously learns how to transform sentences into questions. Process is also improved by feedback from users regarding already generated questions. We evaluated our approach and the comparison with state-of-the-art systems shows that it is a perspective way for research.
机译:在本文中,我们介绍了一种从非结构化文本生成事实问题的交互式方法。我们提出的框架将输入文本转换为结构化的功能集,并将其用于问题生成。它的学习过程基于称为强化学习和监督学习的机器学习技术的结合。学习过程从由声明性句子和指定问题组成的初始对开始,不断学习如何将句子转换为问题。用户对已经生成的问题的反馈也可以改善流程。我们评估了我们的方法,并与最先进的系统进行了比较,这表明这是一种研究的透视方式。

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