With Twitter's growth and popularity, a huge number of views are shared by users on various topics, making this platform a valuable information source on various political, social, and economic issues. This paper investigates English tweets on the Russia-Ukraine war to analyze trends reflecting users' opinions and sentiments regarding the conflict. The tweets' positive and negative sentiments are analyzed using a BERT-based model, and the time series associated with the frequency of positive and negative tweets for various countries is calculated. Then, we propose a method based on the neighborhood average for modeling and clustering the time series of countries. The clustering results provide valuable insight into public opinion regarding this conflict. Among other things, we can mention the similar thoughts of users from the United States, Canada, the United Kingdom, and most Western European countries versus the shared views of Eastern European, Scandinavian, Asian, and South American nations toward the conflict.
翻译:随着Twitter的增长和受欢迎程度的提高,用户在各种议题上分享了大量观点,使这个平台成为各种政治、社会和经济问题的宝贵信息来源。本文调查了俄罗斯-乌克兰战争的英文推文,以分析反映用户对冲突的看法和情绪的趋势。推特的正面和负面情绪使用基于BERT的模式进行分析,并计算了各国积极和负面推文频率的时间序列。然后,我们提出了一个基于邻国平均数的方法,用于模拟和分组各国的时间序列。集成的结果为关于这场冲突的公众舆论提供了宝贵的洞察力。我们可以提到来自美国、加拿大、联合王国和大多数西欧国家的用户的类似想法以及东欧、斯堪的纳维亚、亚洲和南美洲国家对这场冲突的共同看法。