Machine Learning for Feeling Analysis in Twitter Communications: A Case Study in HEYDRU!, Perú
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Author(s)
Alegre-Veliz, Rosa
Gaspar-Ortiz, Pedro
Gamboa-Cruzado, Javier
Rodríguez Baca, Liset
Grandez Pizarro, Waldy
Menéndez Mueras, Rosa
Chávez Herrera, Carlos
Date
2022-10-21Metadata
Show full item recordPublisher
International Journal of Interactive Mobile Technologies (iJIM)
Journal
International Journal of Interactive Mobile Technologies (iJIM)
Additional Links
https://online-journals.org/index.php/i-jim/article/view/35493Abstract
At present, sentiment analysis has become a trend; above all, in digital product development companies, as it is essential for rapid and automatic analysis. Sentiment analysis deals with emotions with the help of software, and it is playing an unavoidable role in workplaces. The constant growth of social networks, especially the Twitter social network, has made the ability to understand and comprehend users or clients take a greater scope regarding their needs; and therefore, increase the complexity of analysis of this social network, causing excessive expenses in time, personnel and money. This work presents a solution through the application of Machine Learning (ML) for sentiment analysis and thus improve analysis, execution time and customer satisfaction. The scope of this research is limited to using the Support Vector Machine (SVM) supervised learning technique for the intended analysis. The model derives from the ML technique making use of cross validation. The applied methodology is the CRISP-ML(Q) Methodology. The results show that the use of ML allows efficient sentiment analysis in Twitter communications.
Type
info:eu-repo/semantics/article
Rights
info:eu-repo/semantics/openAccess
Language
spa
Collections
- Psicología [65]