Social media plays a pivotal role in disseminating news globally and acts as a platform for people to express their opinions on various topics. A wide variety of views accompanies COVID-19 vaccination drives across the globe, often colored by emotions, which change along with rising cases, approval of vaccines, and multiple factors discussed online. This study aims at analyzing the temporal evolution of different Emotion categories: Hesitation, Rage, Sorrow, Anticipation, Faith, and Contentment with Influencing Factors: Vaccine Rollout, Misinformation, Health Effects, and Inequities as lexical categories created from Tweets belonging to five countries with vital vaccine roll-out programs, namely, India, United States of America, Brazil, United Kingdom, and Australia. We extracted a corpus of nearly 1.8 million Twitter posts related to COVID-19 vaccination. Using cosine distance from selected seed words, we expanded the vocabulary of each category and tracked the longitudinal change in their strength from June 2020 to April 2021. We used community detection algorithms to find modules in positive correlation networks. Our findings suggest that tweets expressing hesitancy towards vaccines contain the highest mentions of health-related effects in all countries. Our results indicated that the patterns of hesitancy were variable across geographies and can help us learn targeted interventions. We also observed a significant change in the linear trends of categories like hesitation and contentment before and after approval of vaccines. Negative emotions like rage and sorrow gained the highest importance in the alluvial diagram. They formed a significant module with all the influencing factors in April 2021, when India observed the second wave of COVID-19 cases. The relationship between Emotions and Influencing Factors was found to be variable across the countries.
翻译:在传播全球新闻方面,社交媒体发挥着举足轻重的作用,并充当人们表达对各种议题看法的平台。全球五国(印度、美利坚合众国、巴西、联合王国和澳大利亚)的Tweets所创建的COVID-19疫苗接种运动中,各种观点往往以情绪为颜色,随着病例的增加、疫苗的批准以及在线讨论的多种因素而变化。本研究旨在分析不同情感类别的时间演变:兴奋、愤怒、愤怒、悲伤、抑郁、预测、信仰和情感,以及包含各种因素的内容:疫苗推出、错误信息、健康影响和不平等,这些因素是来自五国(印度、美利坚合众国、巴西、联合王国和澳大利亚)的Tweetes所创建的词汇类别,通常由五国(印度、美国、巴西、英国和澳大利亚)的疫苗推出方案所形成的。我们挖掘了与COVVID-19疫苗接种有关的近180万个Twitter文章。我们利用与某些种子词的距离,扩大了每个类别的词汇,跟踪了它们从2020年6月到2021年4月的第二年的强度的纵向变化。我们利用了所有社区检测算算法在正相关网络中找到了模块。我们所观察到的血压和直径上的数字变化的结果。我们所观察到的直系的数值和直径值关系中,我们所观察到的直径值关系中的直系的直系的直系关系是整个国家。我们所观察到的直系的直系的直系关系。