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Building Updated Research Agenda by Investigating Papers Indexed on Google Scholar: A Natural Language Processing Approach

机译:通过调查谷歌学者编号的论文来建立更新的研究议程:一种自然语言处理方法

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Under many circumstances, scholars need to identify new research directions by going through many different databases to identify the research gap and identify areas which have not yet been studied thus far. Checking all the electronic databases is tiresome, and one often misses the important pieces. In this paper, we propose to shorten the time required for identifying the research gap by using web scraping and natural language processing. We tested this approach by reviewing three distinct areas: (i) safety awareness, (ii) housing price, (iii) sentiment and artificial intelligence from 1988 to 2019. Tokenisation was used to parse the titles of the publications indexed on Google Scholar. We then ranked the collocations from the highest to the lowest frequency. Thus, we determined the sets of keywords that had not been stated in the title and identified the initial idea as a research void.
机译:在许多情况下,学者需要通过许多不同的数据库来确定新的研究方向,以确定到目前为止尚未研究的研究差距和识别尚未研究的区域。 检查所有电子数据库是令人厌倦的,一个人经常错过重要的碎片。 在本文中,我们建议通过使用Web刮擦和自然语言处理来缩短识别研究差距所需的时间。 我们通过审查三个不同的领域来测试这种方法:(i)安全意识,(ii)住房价格,(iii)从1988年到2019年的住房价格和人工智能。被用来解析在谷歌学者上索引的出版物的标题。 然后,我们将搭配从最高频率排列。 因此,我们确定了标题中尚未说明的关键字集,并将最初的想法作为研究空白确定。

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