Penentuan Kelayakan Penerima Pembiayaan Kredit Menggunakan Metode Naive Bayes dan Algoritma C4.5 (Studi Kasus: KSPPS BMT Adil Berkah Sejahtera)

Tri Ardiyanto, Handoyo Widi Nugroho

Abstract


Banking provides credit services to facilitate the community in running a business. To minimize risk, banks need to analyze the feasibility of extending credit to customers. This research aims to obtain the best procedure for classifying credit worthiness to customers. The reason for choosing the best method is the method that is appropriate for use in the classification of credit granting with the highest accuracy value. The highest accuracy was selected through a comparison of the c4.5 and naive bayes algorithms. The accuracy results obtained from the c4.5 algorithm with three tests were 91.23% and AUC 0.686 while Naive Bayes produced an accuracy of 89.90% and AUC 0.744

 

Keywords: Creditworthiness, classification, algorithm c4.5, naive bayes

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References


Nugroho, H. W., Adji, T. B., & Setiawan, N. A. (2018). Performance Improvement of C4.5 Algorithm using Difference Values Nodes in Decision Tree. 2018 6th International Conference on Cyber and IT Service Management (CITSM), 1–6. https://doi.org/10.1109/CITSM.2018.8674250

Permana, T., Siregar, A. M., Masruriyah, A. F. N., & Juwita, A. R. (2020). Perbandingan Hasil Prediksi Kredit Macet Pada Koperasi. Conference on Innovation and Application of Science and Technology, 3(1), 737–746.

Qurahman, T., Mustakim, & Jaini, A. (2019). Penerapan Algoritma Naïve Bayes Classifier Dan Probabilistic Neural Network Untuk Klasifikasi Nasabah Bank Dalam Membayar Kredit. … Komunikasi Dan Industri, November, 205–213.

Supriyadi. (2016). Desain Penyelesaian Kredit Macet Pembiayaan Murabahah BMT Bina UMMat Sejahtera Melalui Pendekatan Sosio Legal Research. Al-Adalah, Vol. XIII(No. 2), 192.

Wijaya, H. D., & Dwiasnati, S. (2020). Implementasi Data Mining dengan Algoritma Naïve Bayes pada Penjualan Obat. Jurnal Informatika, 7(1), 1–7. https://doi.org/10.31311/ji.v7i1.6203

Winarto, W. W. A., & Falah, F. (2020). Analisis Sistem Pengelolaan Keuangan Produk Pembiayaan Syariah Dengan Akad Murabahah. JPS (Jurnal Perbankan Syariah), 1(2), 150–161. https://doi.org/10.46367/jps.v1i2.234

Desyanita, L., & Wibowo, A. (2020). Pemodelan Sistem Prediksi Kelayakan Pengajuan Kredit. Elkom Elektronika Dan Komputer, 13(2), 10–22.

Gorunescu, F. (2011). Data Mining : Concepts, Models and Techniques. In Springer (Vol. 2).

Idris, M., Mustafid, & Suseno, J. E. (2019). Implementation of C4.5 Algorithm and Forward Chaining Method for Higher Education Performance Analysis. E3S Web of Conferences, 125(201 9), 2–6. https://doi.org/10.1051/e3sconf/201912521002

Mardhiyah, P. A., Siregar, R. R. A., & Palupiningsih, P. (2020). Klasifikasi untuk Memprediksi Pembayaran Kartu Kredit Macet. Jurnal Teknologia, 3(1), 91–101.

Nirwana, A., Siregar, A. M., & Rahmat, R. (2022). Klasifikasi Permasalahan Kredit Macet Pada Bank Menggunakan Algoritma Decision Tree C4 . 5. III, 43–50.

Nugroho, H. W., Adji, T. B., & Setiawan, N. A. (2018). Performance Improvement of C4.5 Algorithm using Difference Values Nodes in Decision Tree. 2018 6th International Conference on Cyber and IT Service Management (CITSM), 1–6. https://doi.org/10.1109/CITSM.2018.8674250

Permana, T., Siregar, A. M., Masruriyah, A. F. N., & Juwita, A. R. (2020). Perbandingan Hasil Prediksi Kredit Macet Pada Koperasi. Conference on Innovation and Application of Science and Technology, 3(1), 737–746.

Putro, H. F., Vulandari, R. T., & Saptomo, W. L. Y. (2020). Penerapan Metode Naive Bayes Untuk Klasifikasi Pelanggan. Jurnal Teknologi Informasi Dan Komunikasi (TIKomSiN), 8(2). https://doi.org/10.30646/tikomsin.v8i2.500

Qurahman, T., Mustakim, & Jaini, A. (2019). Penerapan Algoritma Naïve Bayes Classifier Dan Probabilistic Neural Network Untuk Klasifikasi Nasabah Bank Dalam Membayar Kredit. … Komunikasi Dan Industri, November, 205–213.

Rusdiyono. (2009). Perkembangan pengaturan pendirian koperasi di indonesia. Tesis, 1–80.

Sumanto, S., Marita, L. S., Mazia, L., & Ratnasari, T. W. (2021). Analisis Kelayakan Kredit Rumah Menggunakan Metode Naïve Bayes untuk Mengurangi Kredit Macet. Applied Information System and Management (AISM), 4(1), 17–22. https://doi.org/10.15408/aism.v4i1.20274

Supriyadi. (2016). Desain Penyelesaian Kredit Macet Pembiayaan Murabahah BMT Bina UMMat Sejahtera Melalui Pendekatan Sosio Legal Research. Al-Adalah, Vol. XIII(No. 2), 192.

Wijaya, H. D., & Dwiasnati, S. (2020). Implementasi Data Mining dengan Algoritma Naïve Bayes pada Penjualan Obat. Jurnal Informatika, 7(1), 1–7. https://doi.org/10.31311/ji.v7i1.6203

Winarto, W. W. A., & Falah, F. (2020). Analisis Sistem Pengelolaan Keuangan Produk Pembiayaan Syariah Dengan Akad Murabahah. JPS (Jurnal Perbankan Syariah), 1(2), 150–161. https://doi.org/10.46367/jps.v1i2.234




DOI: https://doi.org/10.30873/simada.v6i1.3431

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