Sarirete Akila
Computer Science Department, Effat College of Engineering, Effat University, Jeddah, Saudi Arabia.
Energy and Technology Research Center, Effat University, Jeddah, Saudi Arabia.
J Ambient Intell Humaniz Comput. 2022 Mar 30:1-9. doi: 10.1007/s12652-022-03805-0.
Recent studies on the COVID-19 pandemic indicated an increase in the level of anxiety, stress, and depression among people of all ages. The World Health Organization (WHO) recently warned that even with the approval of vaccines by the Food and Drug Administration (FDA), population immunity is highly unlikely to be achieved this year. This paper aims to analyze people's sentiments during the pandemic by combining sentiment analysis and natural language processing algorithms to classify texts and extract the polarity, emotion, or consensus on COVID-19 vaccines based on tweets. The method used is based on the collection of tweets under the hashtag #COVIDVaccine while the nltk toolkit parses the texts, and the tf-idf algorithm generates the keywords. Both n-gram keywords and hashtags mentioned in the tweets are collected and counted. The results indicate that the sentiments are divided into positive and negative emotions, with the negative ones dominating.
近期关于新冠疫情的研究表明,各年龄段人群的焦虑、压力和抑郁水平有所上升。世界卫生组织(WHO)最近警告称,即便食品药品监督管理局(FDA)批准了疫苗,今年也极不可能实现群体免疫。本文旨在通过结合情感分析和自然语言处理算法来分析疫情期间人们的情绪,以便对文本进行分类,并基于推文提取关于新冠疫苗的极性、情感或共识。所采用的方法是收集带有#COVIDVaccine标签的推文,同时使用自然语言工具包(nltk)解析文本,并用词频-逆文档频率(tf-idf)算法生成关键词。推文中提及的n元关键词和标签都被收集并统计。结果表明,情绪分为积极和消极两种,消极情绪占主导。