文本挖掘:一个非洲国家十年的重点发展趋势

Opoku-Mensah Nelson, Qin Zhiguang, Gyamfi Enoch Opanin, Danso Juliana Mantebea, Nyame Gabriel
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引用次数: 0

摘要

基于2008 - 2018年在线和离线文本、视频和音频数据源,本文确定了非洲国家加纳的新兴发展趋势。总共收集了大约9501个文本文件,在需要的地方,从这些来源转录并通过一系列文本挖掘过程对内容进行分析,以得出所有年份的惯例。主题建模是主要采用的文本挖掘技术。我们开始使用术语频率方法进行主题建模。挖掘过程的结果在概念上以相对频率表的形式呈现,并在视觉上总结为词云,以映射逻辑上和人类可理解的有意义的发现。通过这种方法,出现了45个主要的发展主题,其中教育似乎是加纳政治和政府中最常讨论的趋势。总之,政府可以从文本数据中发现发展布局。
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Text Mining A Decade Of Focal Development Trends In An African Country
This paper identified the emerging developmental trends of Ghana, an African country, based on online and offline textual, video and audio data sources from 2008 to 2018. In all, about 9,501 text files were collected and where needed, transcribed from these sources and content analyzed by series of text mining processes to bring out the convention for all the combined years. Topic modeling was the main adopted text mining technique. We initiated the topic modeling with the term frequency approach. The results from the mining processes were conceptually presented in relative frequency table and visually summarized as word clouds to map meaningful findings that were logically and humanly understandable. Through this approach, 45 major developmental themes emerged of which education seems to be the most frequently discussed trend in Ghanaian politics and government. In conclusion governments can detect developmental layouts from textual data.
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