Analisis Sentimen Publik pada TikTok terhadap Rencana Penerapan Sistem Balik Nama Ponsel Bekas menggunakan Naive Bayes dan Support Vector Machine
DOI:
https://doi.org/10.61132/prosemnasproit.v2i2.198Keywords:
Sentiment, Naive Bayes, Support Vector MachineAbstract
Since the announcement of the policy plan for a name transfer system in the sale of used mobile phones, the issue has attracted widespread public attention and discussion. People have expressed their opinions on social media platforms, particularly TikTok. This study aims to classify the sentiment of TikTok users using Naive Bayes and Support Vector Machine (SVM) algorithms. The data were collected through a comment scraping technique on related content.The research stages include text preprocessing, sentiment labeling into positive, negative, and neutral categories, and feature extraction using TF-IDF. The classification process employs Naive Bayes and Support Vector Machine algorithms, which are then evaluated based on accuracy, precision, recall, and F1-score. The results of this study indicate that both methods are capable of classifying sentiment effectively. However, the Support Vector Machine method is superior to the Naive Bayes method with an accuracy rate of 99.57% compared to 94.30%. This study is expected to help the government understand public responses to the planned policy of the used mobile phone name transfer system.
References
Al Ahzuri, Z. A. K. E. (2024). Teorema Bayes; Statistika Matematika Kecerdasan Buatan dan Pembelajaran Mesin. 1(2), 9–14. https://cendekia.co/index.php/cendekia/article/view/3/3
Anggraini, D., Rahmawati, S., & Kurniawan, R. (2024). Natural Language Processing For Automatic Sentiment Analysis In Social Media Data. International Journal of Information Engineering and Science, 1(1), 16–19. https://doi.org/10.62951/ijies.v1i2.54
Cholifah Sastya, N., & Nugraha, D. I. (n.d.). Penerapan Metode CRISP-DM dalam Menganalisis Data untuk Menentukan Customer Behavior di MeatSolution. http://ejournal.unis.ac.id/index.php/UNISTEK
Datau, R. R., Ichsanuddin Nur, D., Juliputra, F., Eka, A., Haryanto, P., & Fauzi, I. N. (2025). ANALISIS SENTIMEN TIKTOK TERHADAP COFFEE SHOP X DAN IMPLIKASINYA TERHADAP STRATEGI PEMASARAN DIGITAL. JAMBURA, 8(1). http://ejurnal.ung.ac.id/index.php/JIMB
Duei Putri, D., Nama, G. F., & Sulistiono, W. E. (2022). Analisis Sentimen Kinerja Dewan Perwakilan Rakyat (DPR) Pada Twitter Menggunakan Metode Naive Bayes Classifier. Jurnal Informatika Dan Teknik Elektro Terapan, 10(1). https://doi.org/10.23960/jitet.v10i1.2262
Fatmawati, D. (2024). Sentiment Classification of IT Service Feedback via TF-IDF. COGITO Smart Journal, 10(2). https://cogito.unklab.ac.id/index.php/cogito/article/download/701/358?utm_source=chatgpt.com
Franciska Mey Dina, D., Haryanti, T., & Amirul Haq, M. (2025). ANALISIS SENTIMEN TERHADAP KOMENTAR PADA MEDIA SOSIAL TIKTOK YANG BERPOTENSI MENYEBABKAN DEPRESI MENGGUNAKAN METODE NAIVE BAYES. In Jurnal Ilmiah Computing Insight (Vol. 7, Issue 1).
Handhayani, T. (2025). Perbandingan Kinerja Naïve Bayes dan Random Forest dalam Mendeteksi Berita Palsu. In Jurnal Informatika Sunan Kalijaga) (Vol. 10, Issue 2). MEI. https://www.kaggle.com/datasets/clmentbisaillon/fake-and-real-news-dataset?select=True.csv.
Hermawan, L., Ismiati, M. B., Bangau, J., 60, N., & Charitas, M. (2020). Pembelajaran Text Preprocessing berbasis Simulator Untuk Mata Kuliah Information Retrieval. TRANSFORMATIKA, 17(2), 188–199.
Huda Ovirianti, N., Zarlis, M., & Mawengkang, H. (2022). Support Vector Machine Using A Classification Algorithm. Jurnal Dan Penelitian Teknik Informatika, 6(3). https://doi.org/10.33395/sinkron.v7i3
Husen, R. A., Astuti, R., Marlia, L., Rahmaddeni, R., & Efrizoni, L. (2023). Analisis Sentimen Opini Publik pada Twitter Terhadap Bank BSI Menggunakan Algoritma Machine Learning. MALCOM: Indonesian Journal of Machine Learning and Computer Science, 3(2), 211–218. https://doi.org/10.57152/malcom.v3i2.901
Khoerunnisa, S., Shiddieq, D. F., & Nurhayati, D. (2025). Penerapan Algoritma Naive Bayes dengan Teknik TF-IDF dan Cross Validation untuk Analisis Sentimen Terhadap Starlink. MALCOM: Indonesian Journal of Machine Learning and Computer Science, 5(2), 566–577. https://doi.org/10.57152/malcom.v5i2.1852
Koukaras, P., & Tjortjis, C. (2025). Data Preprocessing and Feature Engineering for Data Mining: Techniques, Tools, and Best Practices. In AI (Switzerland) (Vol. 6, Issue 10). Multidisciplinary Digital Publishing Institute (MDPI). https://doi.org/10.3390/ai6100257
Rofiqi, M. A., Fauzan, Abd. C., Agustin, A. P., & Saputra, A. A. (2019). Implementasi Term-Frequency Inverse Document Frequency (TF-IDF) Untuk Mencari Relevansi Dokumen Berdasarkan Query. ILKOMNIKA: Journal of Computer Science and Applied Informatics, 1(2), 58–64. https://doi.org/10.28926/ilkomnika.v1i2.18
Schröer, C., Kruse, F., & Gómez, J. M. (2021). A systematic literature review on applying CRISP-DM process model. Procedia Computer Science, 181, 526–534. https://doi.org/10.1016/j.procs.2021.01.199
Septiani, D., & Isabela, I. (n.d.). SINTESIA: Jurnal Sistem dan Teknologi Informasi Indonesia ANALISIS TERM FREQUENCY INVERSE DOCUMENT FREQUENCY (TF-IDF) DALAM TEMU KEMBALI INFORMASI PADA DOKUMEN TEKS.
Simson Lende, A., Pati, G. K., & Adis, A. (2024). Analisis Sentimen Komentar Pengunjung Air Terjun Waikelo Sawa Menggunakan Metode Naive Baiyes Classifier. Jurnal Ilmu Komputer Dan Bisnis, 15(2), 42–50. https://doi.org/10.47927/jikb.v15i2.764
Vanacore, A., Pellegrino, M. S., & Ciardiello, A. (2024). Fair evaluation of classifier predictive performance based on binary confusion matrix. Computational Statistics, 39(1), 363–383. https://doi.org/10.1007/s00180-022-01301-9
Zakaria, Z., Kusrini, K., & Ariatmanto, D. (2023). Sentiment Analysis to Measure Public Trust in the Government Due to the Increase in Fuel Prices Using Naive Bayes and Support Vector Machine. International Journal of Artificial Intelligence & Robotics (IJAIR), 5(2), 54–62. https://doi.org/10.25139/ijair.v5i2.7167
Zhang, B., Xiao, J., Yan, Hao, Yang, Liziqiu, & Qu, P. (2024). Review of NLP Applications in the Field of Text Sentiment Analysis. Online) |, 2(3). https://doi.org/10.5281/zenodo.11403180
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