Prediksi Kelayakan Seller dalam Penyewaan Gudang Menggunakan Algoritma Decision Tree dan Random Forest
Keywords:
Warehouse Rental, Seller Eligibility, Decision Tree, Random Forest, Data Mining, ClassificationAbstract
Determining seller eligibility in warehouse rental plays a crucial role in maintaining operational stability and minimizing financial risks. However, the selection process is often conducted manually based on subjective judgment, leading to inconsistent and less accurate decisions. This study aims to implement and compare Decision Tree and Random Forest algorithms in predicting seller eligibility using historical data. The dataset consists of 300 records with attributes including Chat Performance, Membership Duration, Rating, and Total Sales. The research process involves data preprocessing, classification model development using RapidMiner, performance evaluation through cross-validation, and feature importance analysis. The results indicate that Random Forest outperforms Decision Tree with an accuracy of 83.11%, while Decision Tree achieves 80.87%. Feature analysis reveals that Chat Performance is the most influential attribute in determining seller eligibility. This research provides a data-driven approach to support objective and consistent decision-making in warehouse rental management.
References
Arayadiba, A. H. (2025). Prediksi tingkat risiko keterlambatan pengiriman barang menggunakan algoritma Decision Tree. SCRIPT (Jurnal Informatika), 13(1). https://ejournal.akprind.ac.id/index.php/script/article/view/5289
Dana, A. R., Kristananda, R. V., Wibowo, M. B. S., & Prasetya, D. A. (2024). Perbandingan algoritma Decision Tree dan Random Forest dengan hyperparameter tuning dalam mendeteksi penyakit stroke. Prosiding Seminar Nasional Informatika Bela Negara (SANTIKA), 4, 66–75.
Firmansah, N., Indahyanti, U., & Eviyanti, A. (2023). Prediksi kelayakan pemberian kredit menggunakan metode Random Forest. Jurnal Ilmiah Komputasi, 22(4), 605–610. https://doi.org/10.32409/jikstik.22.4.3515
Firnanda, P. A., Shofwatillah, L., Rahma, F., & Fauzi, F. (2025). Analisis perbandingan Decision Tree dan Random Forest dalam klasifikasi penjualan produk pada supermarket. Emerging Statistics and Data Science, 3(1), 445–461. https://journal.uii.ac.id/esds/article/view/35637
Huda, D. N. I., Prianto, C., & Awangga, R. M. (2023). Analisis sentimen perbandingan layanan jasa pengiriman kurir pada ulasan Play Store menggunakan metode Decision Tree dan Random Forest. Jurnal Ilmiah Informatika, 11(2), 150–158. https://doi.org/10.33884/jif.v11i02.7952
Oktavianto, H., Sulistyo, H. W., Wijaya, G., Irawan, D., & Abdurrahman, G. (2024). Analisis komparasi kinerja metode Decision Tree dan Random Forest dalam klasifikasi teks data kesehatan. BINA INSANI ICT Journal (BIICT), 11(1), 56–65. https://ejournal-binainsani.ac.id/index.php/BIICT/article/view/2928/1774
Panggabean, I. M. (2022). Analisis prediksi kelayakan nasabah kredit menggunakan algoritma Random Forest. JUKOMIKA (Jurnal Ilmu Komputer dan Informatika), 5(2), 78–90. https://doi.org/10.54650/jukomika.v5i2.472
Prayesy, P. A., Pujakesuma, A., & Qisthiano, M. R. (2025). Evaluasi kinerja Random Forest dan Naïve Bayes untuk prediksi risiko kredit berdasarkan pekerjaan debitur. EXPLoRE: Journal of Applied Business and Economic Research. https://journal.utmmataram.ac.id/index.php/explore/article/view/175
Shafa, B., Handayani, H. H., & Lestari, S. A. P. (2024). Prediksi kanker paru dengan normalisasi menggunakan perbandingan algoritma Random Forest, Decision Tree dan Naïve Bayes. DECODE: Jurnal Pendidikan Teknologi Informasi, 4(3). https://doi.org/10.51454/decode.v4i3.779
Yulianti, T., Cahyana, A. H., Komarudin, M., Mulyani, Y., & Septama, H. D. (2024). Penilaian pembayaran kredit dengan Logistic Regression dan Random Forest pada Home Credit. Pseudocode, 11(2), 79–88. https://doi.org/10.33369/pseudocode.11.2.79-88.












