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Application of machine learning techniques to tweet polarity classification with news topic analysis

Authors
Park, H.Seo, H.Kim, K.-J.Moon, G.
Issue Date
2018
Publisher
Science Publishing Corporation Inc
Keywords
Machine learning; Polarity classification; Topic analysis
Citation
International Journal of Engineering and Technology(UAE), v.7, no.4, pp 40 - 41
Pages
2
Indexed
SCOPUS
Journal Title
International Journal of Engineering and Technology(UAE)
Volume
7
Number
4
Start Page
40
End Page
41
URI
https://scholarworks.dongguk.edu/handle/sw.dongguk/9897
DOI
10.14419/ijet.v7i4.4.19606
ISSN
2227-524X
2227-524X
Abstract
The exponential growth of online community provides the tremendous amount of textual information in terms of human behavioral reaction. Thus, online social media platforms such as Twitters, Facebook and YouTube are reflected as an essential part of human relationship networks. Especially, Twitter is widely applied to the disaster situation as a text and it provides critical insights into emergency management. In this study, we propose a topic analysis and sentiment polarity classification with machine learning techniques for emergency management. In this study, we compared the polarity classification models using three machine learning methods and found that the model with random forests showed the best classification performance. © 2018 Authors.
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