An Approach for generating best possible questions from the given text using Natural Language Processing

IF 0.3
Neha Bhagwatkar, Kimaya Vaidya, Aditi Singh, Sneha Borikar, Hirkani Padwad
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引用次数: 0

Abstract

A crucial ability for every person is the capacity to ask pertinent questions. By automating the process of question formation, an automatic question generator is able to decrease the time and effort needed for manual question creation. Along with benefitting educational institutions like schools and colleges, automated question generation can be used in chatbots and for automated tutoring systems. Question Generation is an area in NLP that is still under research for greater accuracy. Research work has been done in many languages too. The goal of an automatic question generator is to generate syntactically and semantically correct questions, valid according to the given input. The Bidirectional Encoder Representations from Transformers (BERT) model is one of the pre-trained models adopted to implement the same. Additionally, we used Python packages, including NLTK, Spacy, and PKE. To test our findings, we evaluated the validity and relevance of generated questions using human-level cognition and evaluation. We were successful in creating inquiries that adequately reflected several of the peculiarities of English so that a person might comprehend them.
一种利用自然语言处理从给定文本生成最佳问题的方法
每个人的一项关键能力是提出相关问题的能力。通过自动化问题形成过程,自动问题生成器能够减少手动问题创建所需的时间和精力。除了有利于学校和大学等教育机构外,自动问题生成还可以用于聊天机器人和自动辅导系统。问题生成是NLP的一个领域,目前仍在研究更高的准确性。研究工作也以多种语言进行。自动问题生成器的目标是生成语法和语义正确的问题,根据给定的输入有效。双向编码器表示从变压器(BERT)模型是一种预训练模型采用实现相同的。此外,我们还使用了Python包,包括NLTK、Spacy和PKE。为了验证我们的发现,我们使用人类水平的认知和评估来评估生成问题的有效性和相关性。我们成功地创造了能够充分反映英语特点的查询,以便人们能够理解它们。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
International Journal of Next-Generation Computing
International Journal of Next-Generation Computing COMPUTER SCIENCE, THEORY & METHODS-
自引率
66.70%
发文量
60
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