Sentiment Analysis of X Platform on Viral 'Fufufafa' Account Issue in Indonesia Using SVM

https://doi.org/10.22146/ijccs.104158

Suryanto Suryanto(1), Widyastuti Andriyani(2*)

(1) Universitas Teknologi Digital Indonesia
(2) Universitas Teknologi Digital Indonesia
(*) Corresponding Author

Abstract


In this study, we conducted a comprehensive sentiment analysis of users on the social media platform X concerning the viral controversy surrounding the KasKus account known as “Fufufafa.” This issue attracted widespread attention and sparked varied reactions within the online community. To gain insights into public opinion on the topic, we utilized the Support Vector Machine (SVM) method, a widely recognized machine learning algorithm for classification tasks. The data for this research was gathered from various posts, comments, and public discussions on platform X, which were pre-processed to filter out irrelevant information, such as spam, unrelated topics, and non-informative content. After cleaning the data, user sentiments were categorized into three primary classes: positive, negative, and neutral. The SVM model was then trained and tested using a labeled dataset to accurately predict user sentiments based on the textual content of their interactions.

Keywords


Sentiment Analysis, X, SVM, Fufufafa, Indonesia

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References

C. J. C. A. K. Santra, "Genetic Algorithm and Confusion Matrix for Document Clustering," IJCSI, vol. 9, no. Bharathiar University, Coimbatore, pp. 322-328, 2012. [2] M. D. C. Z. A. Salappa, "Feature selection algorithms in classification problems: an experimental evaluation," Optimization Methods and Software, 2005. [3] S. M. F. B. G. R. Y. P. K. Abdul Manan Iddrisu, "International Journal of Information Management Data Insights A sentiment analysis framework to classify instances of sarcastic sentiments within the aviation sector," International Journal of Information Management Data Insights, vol. 3, no. 2, 2022. [4] B. H. I. G. P. A. J. Z. Abd. Samad Hasan Basari, "Opinion Mining of Movie Review using Hybrid Method of Support Vector Machine and Particle Swarm Optimization," Procedia Engineering, vol. 53, no. Universiti Malaysia, pp. 453-462, 2013. [5] E. S. M. A. U. I. M. T. A. M. I. S. &. A. M. H. Ahmad, "Challenges, comparative analysis and a proposed methodology to predict sentiment from movie reviews using machine learning," ICBDAC, vol. 10, pp. 86-91, 2017. [6] A. B. W. D. H. Anto Satriyo Nugroho, "Support Vector Machine Teori dan Aplikasinya," Bioinformatika, 2003. [7] S. B. Atang Saepudin, KOMPARASI ALGORITMA SUPPORT VECTOR MACHINE DAN K-NEAREST NEIGHBOR BERBASIS PARTICLE SWARM OPTIMIZATION PADA ANALISIS SENTIMEN FENOMENA TAGAR #2019GANTIPRESIDEN, JAKARTA: STMIK NUSA MANDIRI, 2018. [8] A. S. T. B.Azhagusundari, "Feature Selection based on Information Gain," International Journal of Innovative Technology and Exploring Engineering , vol. 2, pp. 18-21, 2013. [9] J. C. M. W. Y. &. P. A. Chou, "Expert Systems with Applications Optimizing parameters of Support Vector Machine using fast messy genetic algorithm for dispute classification," Expert Systems With Applications, vol. 41, 2014. [10] Dawson, "Introduction to Research Methods: A Practical Guide for Anyone Undertaking a Research Project," Oxford: How to Books, 2009. [11] R. M. H. J. A. &. S. Y. Dehkharghani, "Expert Systems with Applications Sentimental causal rule discovery from Twitter.," EXPERT Systems With Applications, vol. 41, 2014.



DOI: https://doi.org/10.22146/ijccs.104158

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