Public Sentiments Analysis about Indonesian Social Insurance Administration Organization on Twitter
Author(s) -
Siti Rahmawati,
Muhammad Habibi
Publication year - 2020
Publication title -
ijid (international journal on informatics for development)
Language(s) - English
Resource type - Journals
eISSN - 2549-7448
pISSN - 2252-7834
DOI - 10.14421/ijid.2020.09205
Subject(s) - indonesian , classifier (uml) , naive bayes classifier , social media , support vector machine , sentiment analysis , computer science , conversation , sentence , artificial intelligence , microblogging , sociology , world wide web , linguistics , philosophy , communication
Insurance Administration Organization, which can be used by all people. However, this organization has received various criticisms from the public through social media, namely Twitter. This study aims to analyze public sentiment about the Indonesian Social Insurance Administration Organization on Twitter. The method used in this research is the Naive Bayes Classifier (NBC) method and uses the Support Vector Machine (SVM) method as a comparison. The amount of data used was 12,990 tweets with a data collection period from September 14, 2019 - February 18, 2020. The study compared the two classifier models built, namely the classifier model with two sentiment classes and four sentiment classes. The accuracy results show that the SVM method has a better accuracy value than the NBC method. SVM has an accuracy value of 63.60% and 82.77% for the two sentiment classes in the four sentiment classifier model. The tweet classification results show that the public's conversation about the Indonesian Social Insurance Administration Organization on Twitter has a negative polarity value tendency.
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