针对 COVID-19 关于大学在线教育情绪的 twitter 数据挖掘

IF 2.9 Q2 BUSINESS
Daniel Brandon
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引用次数: 0

摘要

在过去十年中,企业和公众对社交媒体信息的依赖程度大幅提高,而不再依赖传统的新闻和信息来源,如印刷和广播媒体。人们在社交媒体上就各种话题自由地表达自己的观点、情绪、活动和好恶。与调查和其他结构化数据收集方法相比,文本数据挖掘现在通常被企业用来通过电子邮件、博客、推特、点赞等形式的非结构化文本来了解客户对其公司及其产品/服务的感受。本文报告了一项利用 Twitter(最近更名为 "X")数据进行的研究,以确定能否从此类社交媒体数据中获得有关流行病问题的有意义和可操作的信息,以及这些信息与传统调查的比较。2020 年初,COVID-19 大流行病袭来,迫使大学将课堂转移到在线形式。虽然有大量文献涉及利用社交媒体传播地缘政治问题,特别是大流行病,但还没有一项研究利用社交媒体来探讨公众对 COVID 迫使公众接受在线教育的看法。在本研究中,我们利用文本数据挖掘来了解 Twitter 用户对 COVID-19 的影响以及高校转向在线教育的感受。这项研究发现,Twitter 数据挖掘确实产生了与传统调查类似的可操作信息,而且这项研究非常重要,因为它的结果可能会影响组织机构探索使用 Twitter(可能还有其他社交媒体)来获取人们的情绪,以取代(或补充)传统调查和其他收集此类信息的传统手段。本文展示了文本数据挖掘社交媒体的过程及其在当前现实问题中的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Data mining twitter for COVID-19 sentiments concerning college online education

Data mining twitter for COVID-19 sentiments concerning college online education

In the last decade there has been a large increase in corporate and public reliance on social media for information, rather than on the traditional news and information sources such as print and broadcast media. People freely express their views, moods, activities, likes/dislikes on social media about diverse topics. Rather than surveys and other structured data gathering methods, text data mining is now commonly used by businesses to go through their unstructured text in the form of emails, blogs, tweets, likes, etc. to find out how their customers feel about their company and their products/services. This paper reports upon a study using Twitter (recently renamed to “X”) data to determine if meaningful and actionable information could be gained from such social media data in regard to pandemic issues and how that information compares to a traditional survey. In early 2020, the COVID-19 pandemic hit and forced colleges to move classes to an online format. While there is considerable literature in regard to using social media to communicate geo-political issues and in particular pandemics, there is not a study using social media to explore public sentiment in regard to COVID’s forcing online education upon the public. In this study, text data mining was used to gain some insight into the feeling of Twitter users in regard to the effect of COVID-19 and the switch to online education in colleges. This study found that Twitter data mining did produce actionable information similar to the traditional survey, and the study is important since its results may influence organizations to explore the use of Twitter (and possibly other social media) to obtain people’s sentiments instead of (or in addition to) traditional surveys and other traditional means of gathering such information. This paper demonstrates both the process of text data mining social media and its application to current real-world issues.

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自引率
14.70%
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53
审稿时长
9 weeks
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