A Proposed Sentiment Analysis Deep Learning Algorithm for Analyzing COVID-19 Tweets.

Harleen Kaur, Shafqat Ul Ahsaan, Bhavya Alankar, Victor Chang
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引用次数: 91

Abstract

With the rise in cases of COVID-19, a bizarre situation of pressure was mounted on each country to make arrangements to control the population and utilize the available resources appropriately. The swiftly rising of positive cases globally created panic, anxiety and depression among people. The effect of this deadly disease was found to be directly proportional to the physical and mental health of the population. As of 28 October 2020, more than 40 million people are tested positive and more than 1 million deaths have been recorded. The most dominant tool that disturbed human life during this time is social media. The tweets regarding COVID-19, whether it was a number of positive cases or deaths, induced a wave of fear and anxiety among people living in different parts of the world. Nobody can deny the truth that social media is everywhere and everybody is connected with it directly or indirectly. This offers an opportunity for researchers and data scientists to access the data for academic and research use. The social media data contains many data that relate to real-life events like COVID-19. In this paper, an analysis of Twitter data has been done through the R programming language. We have collected the Twitter data based on hashtag keywords, including COVID-19, coronavirus, deaths, new case, recovered. In this study, we have designed an algorithm called Hybrid Heterogeneous Support Vector Machine (H-SVM) and performed the sentiment classification and classified them positive, negative and neutral sentiment scores. We have also compared the performance of the proposed algorithm on certain parameters like precision, recall, F1 score and accuracy with Recurrent Neural Network (RNN) and Support Vector Machine (SVM).

Abstract Image

Abstract Image

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一种用于分析COVID-19推文的情感分析深度学习算法。
随着新冠肺炎病例的增加,各国都面临着控制人口和合理利用现有资源的压力。全球阳性病例的迅速增加在人们中造成了恐慌、焦虑和抑郁。人们发现,这种致命疾病的影响与人口的身心健康成正比。截至2020年10月28日,已有4000多万人检测呈阳性,100多万人死亡。在这段时间里,扰乱人类生活的最主要工具是社交媒体。关于COVID-19的推文,无论是一些阳性病例还是死亡,都在生活在世界不同地区的人们中引发了一波恐惧和焦虑。没有人能否认这样一个事实:社交媒体无处不在,每个人都直接或间接地与它联系在一起。这为研究人员和数据科学家提供了一个访问学术和研究使用数据的机会。社交媒体数据包含许多与COVID-19等现实事件相关的数据。本文通过R编程语言对Twitter数据进行了分析。我们收集了基于标签关键词的推特数据,包括COVID-19,冠状病毒,死亡,新病例,康复。在本研究中,我们设计了一种称为混合异构支持向量机(H-SVM)的算法,并对其进行情绪分类,将其分为积极、消极和中性情绪得分。我们还比较了该算法在精度、召回率、F1分数和准确率等参数上与递归神经网络(RNN)和支持向量机(SVM)的性能。
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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