Klasifikasi Pemilihan Bibit Unggul Kelapa Sawit Menggunakan Algoritma Naïve Bayes

Authors

  • Elsa Damayanti Universitas Muhammadiyah Pontianak
  • Barry Ceasar Octariadi Universitas Muhammadiyah Pontianak
  • Rachmat Wahid Saleh Insani Universitas Muhammadiyah Pontianak

DOI:

https://doi.org/10.55606/jurritek.v4i1.4991

Keywords:

Classification, Data Mining, Decision Support System, Machine Learning, Naïve Bayes

Abstract

Oil palm is a key commodity supporting Indonesia’s economy through exports and employment. The industry’s success depends heavily on the selection of superior seedlings, which determine productivity, crop quality, and resistance to pests and diseases. Manual selection, however, often leads to subjectivity and inconsistency due to limited human resources and genetic variation. To address this, the study applies the Naïve Bayes algorithm for classifying oil palm seedlings based on seven variables: height, stem diameter, number of leaves, leaf color, disease resistance, root growth, and fruit yield. Using an explanatory quantitative method, the study follows seven stages: identifying problems, literature review, collecting 1,000 data entries from PT Intitama Berlian Perkebunan, data pre-processing, system modeling (UML), algorithm implementation, and evaluation using a confusion matrix and black box testing. Data was split into 80% training and 20% testing. The Naïve Bayes-based classification achieved 95% accuracy and perfect recall (1.00) for the superior seedling class. However, its performance on the minority class (non-superior seedlings) was weaker due to dataset imbalance. Black box testing verified all system functions worked correctly, enabling effective and efficient use by administrators. The study concludes that Naïve Bayes improves objectivity, efficiency, and accuracy in seedling selection. Nonetheless, attention is needed on data balancing and optimization to maintain consistent performance across classes. This system shows strong potential as a decision-support tool in plantations and promotes digital transformation in agricultural processes.

Downloads

Download data is not yet available.

References

Agustina, N., Citra, D. H., Purnama, W., Nisa, C., & Kurnia, A. R. (2022). Implementasi algoritma Naive Bayes untuk analisis sentimen ulasan Shopee pada Google Play Store: The implementation of Naïve Bayes algorithm for sentiment analysis of Shopee reviews on Google Play Store. MALCOM: Indonesian Journal of Machine Learning and Computer Science, 2(1), 47–54.

Alfina, O., & Harahap, F. (2019). Pemodelan UML sistem pendukung keputusan dalam penentuan kelas siswa siswa tunagrahita. Methomika: Jurnal Manajemen Informatika & Komputerisasi Akuntansi, 3(2), 143–150.

Amelia, N., Dilla, S. F., Azizah, S., Fahira, Z., & Darlis, A. (2023). Efektivitas peran guru dalam kurikulum Merdeka Belajar. Jurnal Ilmiah Wahana Pendidikan, 9(2), 421–426.

Asrin, F. (2023). Pengujian fungsionalitas sistem inventaris barang pada Sekolah Menengah Kejuruan Citra Borneo menggunakan black box testing. Jurnal Ilmiah ILKOMINFO-Ilmu Komputer & Informatika, 6(2), 131–143.

Br Ginting, D. Y., br Ginting, R., & Sembiring, D. J. (2020). Sistem pendukung keputusan dengan menggunakan metode Analytic Hierarchy Process (AHP). Yogyakarta: Penerbit Andi.

Elvera, S. E., & Yesita Astarina, S. E. (2021). Metodologi penelitian. Yogyakarta: Penerbit Andi.

Fatima, F., Setiawan, E., Renata, R., & Ramadhani, A. (2024, Oktober). Strategi pengelolaan berkelanjutan kelapa sawit di Indonesia. Forum Ekonomi: Jurnal Ekonomi, Manajemen dan Akuntansi, 26(4), 803–807.

Firmansyah, H., Saputra, S. A., & Falah, M. (2025). Pengaruh dimensionality reduction menggunakan Self-Organizing Maps terhadap klasifikasi Naive Bayes pada data kampanye pemasaran. Journal of Multidisciplinary Inquiry in Science, Technology and Educational Research, 2(1b), 1853–1862.

Kushariyadi, K., Apriyanto, H., Herdiana, Y., Asy’ari, F. H., Judijanto, L., Pasrun, Y. P., & Mardikawati, B. (2024). Artificial Intelligence: Dinamika perkembangan AI beserta penerapannya. PT. Sonpedia Publishing Indonesia.

Mahendra, G. S., Tampubolon, L. P. D., Arni, S., Kharisma, L. P. I., Resmi, M. G., Sudipa, I. G. I., ... & Syam, S. (2023). Sistem pendukung keputusan: Teori dan penerapannya dalam berbagai metode. PT. Sonpedia Publishing Indonesia.

Mauliana, P., Wiguna, W., & Permana, A. Y. (2020). Pengembangan e-helpdesk support system berbasis web di PT Akur Pratama. Jurnal Responsif: Riset Sains dan Informatika, 2(1), 19–29.

Prastyo, E. H. A., Suhartono, S., Faisal, M., Yaqin, M. A., & Firdaus, R. A. J. (2024). Naive Bayes classification untuk prediksi cacat perangkat lunak. JIPI (Jurnal Ilmiah Penelitian dan Pembelajaran Informatika), 9(2), 782–791.

Punkastyo, D. A., Septian, F., & Syaripudin, A. (2024). Implementasi data mining menggunakan algoritma Naïve Bayes untuk prediksi kelulusan siswa. Journal of System and Computer Engineering, 5(1), 24–35.

Purba, B., & Syahputra, R. (2021). Implementasi metode Naive Bayes Classifier pada evaluasi kepuasan mahasiswa terhadap pembelajaran daring. Infotekjar: Jurnal Nasional Informatika dan Teknologi Jaringan, 6(1), 85–91.

Rahmaddeni, S. K. M. K., Wulandari, D., Renova, M., & Sari, R. (2024). Machine Learning. Serasi Media Teknologi.

Senika, A., Rasiban, R., & Iskandar, D. (2022). Implementasi metode Naïve Bayes dalam penilaian kinerja sales marketing pada PT. Pachira Distrinusa. Jurnal Media Informatika Budidarma, 6(1), 701.

Setiawan, Z., Fajar, M., Priyatno, A. M., Putri, A. Y. P., Aryuni, M., Yuliyanti, S., ... & Wijaya, A. (2023). Buku ajar data mining. PT. Sonpedia Publishing Indonesia.

Siregar, I. M., Pratama, D., & Himawan, C. (2024). Penggunaan Jaccard Similarity Coefficient dalam optimasi proses rekrutmen karyawan berbasis profil dan kompetensi. SINTECH (Science and Information Technology) Journal, 7(2), 101–111.

Suriani, U. (2023). Penerapan data mining untuk memprediksi tingkat kelulusan mahasiswa menggunakan algoritma decision tree C4.5. Journal of Computer and Information Systems Ampera, 4(2), 55–65.

Downloads

Published

2025-05-20

How to Cite

Elsa Damayanti, Barry Ceasar Octariadi, & Rachmat Wahid Saleh Insani. (2025). Klasifikasi Pemilihan Bibit Unggul Kelapa Sawit Menggunakan Algoritma Naïve Bayes . JURAL RISET RUMPUN ILMU TEKNIK, 4(1), 392–411. https://doi.org/10.55606/jurritek.v4i1.4991

Similar Articles

<< < 6 7 8 9 10 11 12 13 14 15 > >> 

You may also start an advanced similarity search for this article.