Analisis Sentimen Opini Publik Terhadap Institusi Pajak Di Indonesia Pada Media Sosial Twitter Menggunakan Metode Naïve Bayes Classifier
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Fakultas Ilmu Komputer Universitas Jember
Abstract
The tax payment report consists of 2 reports, namely the State Officials' Wealth
Report (LHKPN) which can be known to the public, and the Annual Tax Return (SPT)
which is confidential. The phenomenon of irregularities in tax payments by state
officials has triggered various public opinions on social media, especially Twitter.
Several digital media released news about tax institution issues, one of which was
Suara.com which released news that around 13 thousand employees in the tax
environment, Sri Mulyani's subordinates, have not reported their assets. This gave rise
to various responses from the public on Twitter, namely positive, neutral, and negative
opinions. Twitter is a social media that is easy to access and obtains all information
quickly. This opinion is used to analyze public sentiment regarding tax institutions in
Indonesia using the Naïve Bayes Classifier (NBC) method. The dataset in this study
used 1250 tweet data which were given labels and it was found that negative had a
dataset of 784 (62.72%), neutral had a dataset of 172 (13.76%), and positive had a
dataset of 293 (23.44%). It can be seen that negative sentiment is higher than the other
two sentiments. After going through the text mining, word weighting, and testing stages
using the NBC method, the best model was produced with 70% training data and 30%
test data with an accuracy rate of 61.3%. The response from the public who give
negative opinions towards tax institutions is still greater than those who support tax
institutions in Indonesia
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uploud by Tedyy_14.04.2026
