Twitter Based Sentiment Analysis of Russia-Ukraine War Using Machine Learning

IF 0.5 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC Journal of Electrical Systems Pub Date : 2024-07-10 DOI:10.52783/jes.5255
Dr. Dineshkumar Bhagwandas, Vaghela, Mr. Sachinkumar, H. Makwana, Mr. Haresh, D. Chande, Mr. Priyam Mehta
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Abstract

Social media platforms and micro blogging websites can be used as a potential source for gathering opinions and sentiments from the public on a variety of topics, such as the present state of affairs in nations that have experienced conflict. Twitter, in example, offers a variety of text tweets that might link to feelings across time and geography. Using Textblob and Vader as a lexicon method, this research paper performs sentiment analysis over a dataset containing tweets regarding the situation before and after Russia invades Ukraine. It also performs standard machine learning over the dataset. This machine learning model categorizes opinions about Russia's invasion of Ukraine according to sentiments. The current study examines different machine learning algorithms and focuses on the Doc2Vec feature extraction approach utilizing Chi2 (χ2) as a feature selection. The objective of this research is to use Twitter to get people's opinions about the war. The current study helps news media organizations analyze public opinion, particularly that of Russia and Ukraine, about the conflict and draw attention to upcoming difficulties. 
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利用机器学习对俄乌战争进行基于 Twitter 的情感分析
社交媒体平台和微博客网站可作为收集公众对各种主题的意见和情感的潜在来源,如经历过冲突的国家的现状。例如,Twitter 提供了各种文本推文,这些推文可能与不同时间和地域的情感有关。本研究论文使用 Textblob 和 Vader 作为词库方法,对包含有关俄罗斯入侵乌克兰前后局势的推文的数据集进行了情感分析。它还对数据集进行了标准的机器学习。该机器学习模型根据情感对有关俄罗斯入侵乌克兰的观点进行分类。当前的研究考察了不同的机器学习算法,重点关注利用 Chi2 (χ2) 作为特征选择的 Doc2Vec 特征提取方法。本研究的目的是利用 Twitter 了解人们对战争的看法。当前的研究有助于新闻媒体机构分析公众(尤其是俄罗斯和乌克兰的公众)对冲突的看法,并引起人们对即将到来的困难的关注。
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来源期刊
Journal of Electrical Systems
Journal of Electrical Systems ENGINEERING, ELECTRICAL & ELECTRONIC-
CiteScore
1.10
自引率
25.00%
发文量
0
审稿时长
10 weeks
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