Aspect Mining of COVID-19 Outbreak with SVM and NaiveBayes Techniques
2021 (English)Independent thesis Basic level (degree of Bachelor), 10 credits / 15 HE credits
Student thesis
Abstract [en]
The outbreak of COVID-19 is one of the major pandemics faced by the world ever and the World Health Organization (WHO) had declared it as the deadliest virus outbreak in recent times. Due to its incubation period, predicting or identifying the paints had become a tough job and thus, the impact is on a large scale. Most of the countries were affected with Coronavirus since December 2019 and the spread is still counting. Irrespective of the preventive measures being promoted on various media, still the speculations and rumors about this outbreak are peaks, that too particular with the social media platforms like Facebook and Twitter. Millions of posts or tweets are being posted on social media via various apps and due to this, the accuracy of news has become unpredictable, and further, it has increased panic among the people. To overcome these issues, a clear classification or categorization of the posts or tweets should be done to identify the accuracy of the news and this can be done by using the basic sentiment analysis technique of data sciences and machine learning. In this project, Twitter will be considered as the social media platform and the millions of tweets will be analyzed for aspect mining to categorize them into positive, negative, and neutral tweets using the NLP techniques. SVM and Naive Bayes approach of machine learning and this model will be developed.
Place, publisher, year, edition, pages
2021. , p. 39
Keywords [en]
Aspect Mining, COVID-19, Deeplearning, NLP
National Category
Telecommunications
Identifiers
URN: urn:nbn:se:bth-21891OAI: oai:DiVA.org:bth-21891DiVA, id: diva2:1575459
Subject / course
ET1464 Degree Project in Electrical Engineering
Educational program
ETGDB Bachelor Qualification Plan in Electrical Engineering 60,0 hp
Presentation
2021-06-21, 14:20 (English)
Supervisors
Examiners
2021-06-302021-06-292021-06-30Bibliographically approved