Journal of Computer Science Artificial Intelligence and Communications
Vol 1 No 2 (2024): November 2024

Sentiment Analysis of Social Media Towards Public Services Using Naive Bayes and Text Mining

Rusmin Saragih (Unknown)
Mardiah (Unknown)
Deni Apriadi (Unknown)



Article Info

Publish Date
30 Nov 2024

Abstract

The rapid development of information and communication technology has driven the increased use of social media as a means of interaction between the public and service providers. Social media has become a platform for the public to express their opinions on the quality of services they receive, whether in the form of praise, suggestions, or complaints. Therefore, sentiment analysis of social media data can be a strategic tool in evaluating the performance of public services. This research aims to analyze public sentiment towards public services by utilizing text mining techniques and the Naive Bayes Classifier algorithm. The data used was collected from social media platforms such as Twitter and Facebook, followed by a text preprocessing stage that included tokenizing, stopword removal, and stemming. Subsequently, the data was analyzed to classify sentiment into positive, negative, and neutral categories. The test results show that the Naive Bayes algorithm is capable of classifying data with a satisfactory level of accuracy, making it an efficient method for monitoring public perception in real-time. This research contributes to supporting decision-making by government agencies regarding the improvement of public service quality based on publicly available feedback from social media

Copyrights © 2024






Journal Info

Abbrev

jocsaic

Publisher

Subject

Computer Science & IT Earth & Planetary Sciences Engineering

Description

Journal of Computer Science Artificial Intelligence and Communications is a multidisciplinary, peer-reviewed journal dedicated to advancing research in computer science, artificial intelligence (AI), and communication technologies. The journal publishes high-quality original articles, reviews, and ...