通过深度学习技术探索COVID - 19推文数据以预测负面本体

Vasudha Rani Vaddadi, Smritilekha Das, Anupama V
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引用次数: 2

摘要

COVID-19是一种传染病,于2019年12月在中国武汉首次出现。这种病毒已经蔓延到世界各地。所以在这种情况下,Twitter通过提供最新信息和与他人联系来帮助人们。作为世卫组织提供的卫生信息,本论文工作是实现从Twitter社交媒体的最新推文中提取Covid-19细节的自动化。大多数人一开始都是关于新冠肺炎的负面推文,但随着时间的推移,人们开始转向积极和中立的评论。有时,大多数评论都是关于战胜冠状病毒的。为了通过推特了解人们对这次大流行的看法,我们试图提出一个算法,该算法将尝试使用现代计算能力和一些先进的算法来分析推特,并最终得出结论。利用循环神经网络的一种LSTM(长短期记忆)进行情绪分析,可以看到人们对covid - 19哈希标签的推文的反应。这些推文被分类并标记为积极、消极和中性,然后将结果可视化。推文被分为三类,从中得出一些有用的模式,并试图提出一些通用的算法,这样它就不能只适用于covid - 19或一些与健康相关的推文,而是适用于所有类型的推文或其他一些社交媒体平台,如Instagram或LinkedIn。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploration of COVID 19 Tweets Data for the Prediction of Negative Ontologies through Deep Learning Techniques
COVID-19 is an infectious disease, which was first appeared in December 2019 in Wuhan, China. This virus has spread all over the world. So in a situation like this, Twitter is helping people by giving the latest information and to connect with others. As the WHO giving health information, this paper work is an implementation of automation for extracting details of Covid-19 from the latest Tweets of Twitter Social media. Most of the people started with Negative tweets about covid19, but with increasing time people shifted towards positive and neutral comments. At some time most of the comments are about winning against coronavirus. To understand the people’s opinion towards this pandemic through their tweets, we have tried to come up with an algorithm that will try to analyze the tweets using the modern computational power and some of the advanced algorithms and finally concluded at a point. Sentiment analysis using LSTM (Long Short Term Memory) which is a type of Recurrent Neural Networks, has been applied to tweets having covid19 Hash tags to see people’s reactions to the pandemic. The tweets are classified and labeled as positive, negative, and neutral then visualized the result. Tweets are categorized into three classes and derive some useful patterns from them and trying to come up with some generalized algorithms so that it cannot only be applied for Covid19 or some health-related, rather apply all kind of tweets or some other social media platform such as Instagram or LinkedIn.
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