KLASIFIKASI OPINI DARING IMPLEMENTASI TEKNOLOGI VIDEO UNDERSTANDING UNTUK KESELAMATAN KERJA INDUSTRI 4.0
DOI:
https://doi.org/10.31949/j-ensitec.v12i01.16227Abstrak
The advancement of Industry 4.0 technologies has accelerated the adoption of artificial intelligence, including video understanding, to improve efficiency and workplace safety in industrial environments. However, the implementation of this technology has generated diverse public opinions, particularly on social media platforms such as X. This study aims to identify public perceptions regarding the use of video understanding to ensure workplace safety through online opinion classification. Data were collected from X using a web scraping technique based on selected keywords. The dataset then underwent a series of preprocessing steps, including case folding, filtering, tokenization, normalization, stopword removal, and stemming. Feature representation was carried out using TF-IDF, followed by classification with the Multinomial Naive Bayes algorithm. The model was chosen due to its suitability in handling short and unstructured text, which aligns with the characteristics of tweets. Model performance was evaluated using accuracy, precision, recall, F1-score, and a confusion matrix. The results show that the majority of public opinions are neutral, with a smaller proportion of positive and negative sentiments. The model achieved a high performance with 98% accuracy and strong precision, recall, and F1-score across all sentiment classes. These findings provide insights into public acceptance of video understanding in workplace safety and can serve as valuable input for industry stakeholders in designing transparent and adaptive implementation strategies. Furthermore, this study highlights the contribution of data science in understanding societal perceptions of digital technologies in the modern era.
Kata Kunci:
Data Science, Naïve Bayes, Preprocessing, Video Understanding, XUnduhan
Referensi
[1] Ernanda, M. Y. (2023). Peningkatan Keamanan dan Keselamatan Kerja di Lingkungan Industri. Circle Archive, 1(3), 2–12. Link: https://circle-archive.com/index.php/carc/article/view/58/49
[2] Tang, Y., Bi, J., Xu, S., Song, L., Liang, S., Wang, T., … Xu, C. (2023). Video Understanding with Large Language Models: A Survey. arXiv Preprint arXiv:2312.17432. Link: https://arxiv.org/abs/2312.17432
[3] Munawar, I. F., Alamanda, D. T. (2022). Sikap Masyarakat Terhadap Aplikasi PeduliLindungi Menggunakan Multiatribut Fishbein. JPKP – Jurnal Pembangunan dan Kebijakan Publik, 13(1), 1–19. Link: https://jurnal.fisipuniga.ac.id/index.php/jpkp/article/view/132
[4] Khoirunnisaa, N., Nabila, K., Kesuma, N., Setiawan, S., Yunizar, A., & Yusuf, P. (2024). Klasifikasi Teks Ulasan Aplikasi Netflix pada Google Play Store Menggunakan Algoritma Naive Bayes dan SVM. Jurnal Ilmu Komputer dan Teknologi Informasi, 7(1), 64–73.
[5] Amaia, E., Izzah, A. N., Akram, A., & Risal, N. (2023). Klasifikasi Penyalahgunaan Pesan Singkat Menggunakan Algoritma Naïve Bayes. Techno Xplore – Jurnal Ilmu Komputer dan Teknologi Informasi.
[6] Winahyu, J., & Suharjo, I. (2021). Aplikasi Web Analisis Sentimen dengan Algoritma Multinomial Naïve Bayes. KARMAPATI – Kumpulan Artikel Mahasiswa Pendidikan Teknik Informatika, 10(2).
[7] Aftab, F., Aftab, T., Khalid, H., et al. (2023). A Comprehensive Survey on Sentiment Analysis Techniques. International Journal of Technology, 14(6), 1288–1298. DOI: https://doi.org/10.14716/ijtech.v14i6.6632
[8] Giffari, M. R. A. (2022). Analisis Sentimen Berbasis Aspek pada Ulasan Aplikasi Tangerang Live Menggunakan Latent Dirichlet Allocation dan Naive Bayes.
[9] Siswono, A. P., et al. (2024). Analisis Sentimen Pelantikan Presiden Indonesia 2024 Menggunakan Model Klasifikasi dan Algoritma Naive Bayes. Jurnal Sistem Informasi, 4(1).
[10] Gustiara, D. (2023). Implementasi Latent Dirichlet Allocation Terhadap Data Kasus Tindak Pidana.
[11] Ramadhan, M. Z., & Mubarak, R. (2025). Analisis Sentimen Masyarakat Terhadap Kenaikan Bahan Bakar Minyak pada Media Sosial YouTube dengan Metode K-Nearest Neighbor dan Support Vector Machine.
[12] Savitri, N. L. P. C., Rahman, R. A., Venyutzky, R., & Rakhmawati, N. A. (2021). Analisis Klasifikasi Sentimen Terhadap Sekolah Daring pada Twitter Menggunakan Supervised Machine Learning. Jurnal Teknik Informatika dan Sistem Informasi, 7(1). DOI: https://doi.org/10.28932/jutisi.v7i1.3216
[13] Raif, M. I., Hidayati, N. N., & Matulatan, T. (2024). Otomatisasi Pendeteksi Kata Baku dan Tidak Baku pada Data Twitter Berbasis KBBI. Jurnal Teknologi Informasi dan Ilmu Komputer, 11(2), 337–348. DOI: https://doi.org/10.25126/jtiik.20241127404
[14] Hendry, M., Sianturi, F., Ridok, A., & Santoso, E. (2023). Peringkasan Teks Otomatis Menggunakan Metode Latent Semantic Analysis pada Artikel Berita Ekonomi Berbahasa Indonesia. Jurnal Pengembangan Teknologi Informasi dan Komunikasi (J-PTIIK). Link: https://j-ptiik.ub.ac.id/
[15] Soyusiawaty, D., & A.-Zahra. (2024). Peran Algoritma Stemming Nazief Adriani dalam Peningkatan Relevansi Pencarian Dokumen. Jurnal Kesatria Informatika, 5(1). DOI: https://doi.org/10.30645/kesatria.v5i1.335
[16] Putri Gabriella, Y. A. (2023). Optimasi Penerimaan Siswa Baru dengan Penerapan Algoritma Text Mining dan TF-IDF. Journal of Computing and Informatics Research, 2(3), 110–117. DOI: https://doi.org/10.47065/comforch.v2i3.941
[17] Gumilang, W., & Riyandi, A. (2023). Sentimen Analisis Pengguna Twitter terhadap SEA Games 2023 dengan Metode Naive Bayes. Jurnal Akademika, 16(1). DOI: https://doi.org/10.53564/akademika.v16i1.1125
[18] Martantoh, E., & Yanih, N. (2022). Implementasi Metode Naïve Bayes untuk Klasifikasi Karakteristik Kepribadian Siswa di Sekolah MTS Darussa’adah Menggunakan PHP MySQL.
[19] Gustiandi, B. (2023). Langkah Awal Menguasai Bahasa Pemrograman Python. Penerbit BRIN. DOI: https://doi.org/10.55981/brin.633
[20] Vallejo, W., Díaz-Uribe, C., & Fajardo, C. (2022). Google Colab and Virtual Simulations: Practical E-Learning Tools to Support the Teaching of Thermodynamics and to Introduce Coding to Students. ACS Omega, 7(8), 7421-7429. DOI: https://doi.org/10.1021/acsomega.2c00362
[21] Yeung, A. W. K., et al. (2021). Implications of Twitter in Health-Related Research: A Landscape Analysis of the Scientific Literature. Frontiers in Public Health, 9. DOI: https://doi.org/10.3389/fpubh.2021.654481
[22] Aponno, J. C. (2022). Penerapan Algoritma Sentiment Analysis dan Naïve Bayes terhadap Opini Pengunjung di Tempat Wisata Pantai Pintu Kota, Kota Ambon. Jurnal Ilmiah, 9(4), 3180–3188. Link: https://jurnal.mdp.ac.id
Diterbitkan
Cara Mengutip
Terbitan
Bagian
Lisensi
Hak Cipta (c) 2025 Galih Pramudia, Ade Bastian, Dadan Zaliluddin

Artikel ini berlisensiCreative Commons Attribution-ShareAlike 4.0 International License.
An author who publishes in the J-ENSITEC (Journal of Engineering and Sustainable Technology) agrees to the following terms:
- Author retains the copyright and grants the journal the right of first publication of the work simultaneously licensed under the Creative Commons Attribution-ShareAlike 4.0 License that allows others to share the work with an acknowledgment of the work's authorship and initial publication in this journal
- The author is able to enter into separate, additional contractual arrangements for the non-exclusive distribution of the journal's published version of the work (e.g., post it to an institutional repository or publish it in a book) with the acknowledgment of its initial publication in this journal.
- The author is permitted and encouraged to post his/her work online (e.g., in institutional repositories or on their website) prior to and during the submission process, as it can lead to productive exchanges, as well as earlier and greater citation of the published work




