Klasifikasi Gaya Hidup Siswa Menggunakan Metode K-Nearest Neighbors
DOI:
https://doi.org/10.59024/jiti.v4i2.1785Keywords:
Lifestyle, K-Nearest Neighbors, Machine LearningAbstract
This research aims to classify students’ lifestyles using the K-Nearest Neighbors (KNN) algorithm. The dataset consists of 392 high school students obtained from Kaggle, with key attributes including study hours, social media usage, Netflix viewing duration, attendance, sleep quality, internet quality, mental health, and extracurricular activities. KNN was chosen for its simplicity in distance-based classification, measured using Euclidean Distance. The data was divided into training and testing sets, then evaluated using accuracy and a confusion matrix. The results show that KNN effectively classifies students’ lifestyles into four categories: healthy, less active, at risk, and highly at risk. This classification is expected to assist educational institutions, parents, and students in understanding lifestyle patterns and their impact on academic performance and mental well-being. Furthermore, this study emphasizes the relevance of applying machine learning in education, aligned with Islamic values concerning health, discipline, and the optimal use of time.
References
Aditya, F. R., Hudah, M., & Zhannisa, U. H. (2021). Analisis Gaya Hidup Sehat Siswa Kelas XII SMAN 14 Semarang di Era Pandemi Covid-19. Journal of Physical Activity and Sports (JPAS). https://doi.org/https://doi.org/10.53869/jpas.v2i1.54
Aprihartha, M. A., Alam, T. N., & Husniyadi, M. (2024). Perbandingan Metrik Euclidean dan Metrik Manhattan untuk K-Nearest Neighbors dalam Klasifikasi Kismis. 4(1), 21–30.
Heryyanti, D. A., Tanzeh, A., & Masrokan, P. (2021). Pengaruh Gaya, Minat, Kebiasaan dan Lingkungan Belajar terhadap Prestasi Belajar Siswa Madrasah Ibtidaiyah di Era New Normal. Edukatif : Jurnal Ilmu Pendidikan.
LATIFAH, D. N. (2023). Analisis Gaya Belajar Siswa Untuk Pembelajaran Berdiferensiasi Di Sekolah Dasar. Learning : Jurnal Inovasi Penelitian Pendidikan Dan Pembelajaran. https://doi.org/https://doi.org/10.51878/learning.v3i1.2067
Maulida, U., & Tampati, R. (2023). Gaya Hidup Berkelanjutan Melalui Projek Penguatan Profil Pelajar Pancasila. Dirasah: Jurnal Pemikiran Dan Pendidikan Dasar Islam. https://doi.org/https://doi.org/10.51476/dirasah.v6i1.453
Maulidhya, U., Mustadjar, M., & Mappalahere, M. T. (2021). Gaya Hidup (Lifestyle) Makeup Dan Skincare Di Kalangan Laki-Laki Milenial. Phinisi Integration Review.
Murtiningsih, M. K., Pandelaki, K., & Pandelaki, K. (2021). Gaya Hidup sebagai Faktor Risiko Diabetes Melitus Tipe 2. https://doi.org/https://doi.org/10.35790/ecl.v9i2.32852
Putri, R. A., Magdalena, I., Fauziah, A., Azizah, F. N., & Tangerang, U. M. (2021). Pengaruh Gaya Belajar Terhadap Pembelajaran Siswa Sekolah Dasar. Cerdika: Jurnal Ilmiah Indonesia, 1(2), 157–163.
Sariani, N. kadek, Hafid, R., Hasiru, R., Ardiansyah, & Ahmud, M. M. (2023). Pengaruh Gaya Hidup terhadap Hasil Belajar Siswa pada Mata Pelajaran Ekonomi Kelas XI IPS SMA Negeri I Popayato. JIIP - Jurnal Ilmiah Ilmu Pendidikan. https://doi.org/https://doi.org/10.54371/jiip.v6i10.2237
Wahyuni, S. E., Tendri, M., & Kusumawati, N. I. (2021). Hubungan Gaya Belajar Dengan Prestasi Belajar Matematika Siswa Kelas Xi Smk Muhammadiyah 1 Palembang. Indiktika : Jurnal Inovasi Pendidikan Matematika.
Yuliansyah, M. R., Franz, A., & B, M. (2022). Perbandingan Metode K-Nearest Neighbors dan Naïve Bayes Classifier Pada Klasifikasi Status Gizi Balita di Puskesmas Muara Jawa Kota Samarinda. Adopsi Teknologi Dan Sistem Informasi (ATASI).
Downloads
Published
Issue
Section
License
Copyright (c) 2026 JURNAL ILMIAH SAINS TEKNOLOGI DAN INFORMASI

This work is licensed under a Creative Commons Attribution-ShareAlike 4.0 International License.








