Classification of High-Risk Provinces for Fintech Lending Based on TWP90 from LPBBTI OJK Using Interpretable Model for Artificial Intelligence Ethical Transparency

Adi Rizky Pratama, Ayu Ratna Juwita, Antika Zahrotul Kamalia, Jan Everhard Riwurohi

Abstract


The growth of the fintech lending industry (LPBBTI) in Indonesia has expanded access to financing but has also increased credit risk, as reflected in the 90-day Default Rate (TWP90). This condition demands proactive regional risk monitoring, while existing approaches are still dominated by historical descriptive analysis. This study aims to develop a high-risk provincial classification as a transparent and accountable early warning system. The research methodology uses multi-sheet data integration from the Financial Services Authority (OJK) LPBBTI Statistics to create a provincial-monthly panel dataset covering supply, demand, and transaction activity. The Logistic Regression model was used as the baseline model due to its interpretability and support for decision auditability. Model evaluation using a time-based split approach during the May–July 2025 test period demonstrated good performance, with an ROC-AUC of 0.8598, an accuracy of 0.8462, and a precision of 0.8000. The results of feature analysis indicate that scale and activity indicators, particularly the outstanding amount, the number of active borrowers, and the value of disbursed funds, contribute significantly to risk probability. Although detection sensitivity (recall: 0.5333) still needs improvement, this study provides a measurable, relevant regional risk-ranking framework for regulatory decision-making.


Keywords


Fintech lending, TWP90, Risk Classification, Machine Learning, Transparency

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References


Anggara, T. R. (2023). Strategi Implementasi Siem Untuk Mengurangi Risiko Terhadap Kebocoran Informasi. 9(2), 101–107.

Ardiansyah, J., & Yazid, M. (2025). Model Mitigasi Risiko Likuiditas pada Fintech Syariah P2P Lending: Liquidity Risk Mitigation Model in Fintech Sharia P2P Lending. LITERA: Jurnal Ilmiah Mutidisiplin, 2(3), 234–244. https://litera-academica.com/ojs/litera/article/view/149%0Ahttps://litera-academica.com/ojs/litera/article/download/149/117

Aryastana, P., Yujana, C. A., Xandrayana, K. W., & Subiyanto, K. H. (2025). Analisis statistik kinerja dan koreksi kesalahan data curah hujan berbasis satelit di Provinsi Bali. Majalah Geografi Indonesia, 36(2), 95. https://doi.org/10.22146/mgi.70636

Ayu, A. S., & Muryanto, Y. T. (2025). Perlindungan Hukum Terhadap Investor Melalui Prinsip Keterbukaan Dalam Mekanisme Securities Crowdfunding (SCF) Legal Protection for Investors through the Principle of Disclosure In the Securities Crowdfunding (SCF) Mechanism. Jurnal USM Law Review, 8(3), 1338–1361. https://doi.org/https://doi.org/10.34001/jdc.v6i2.3644.

Cakra, Islah, A. M., Rahman, B., Samsuddin, & Aksara, L. B. (2025). Klasifikasi Daerah Rawan Longsor menggunakan Metode https://semantik.uho.ac.id/index.php/journal Deep Learning Berbasis Data Citra Sentinel-1. 6(2), 167–186.

Hilabi, S. S., & Khairunisa, S. (2025). Pemanfaatan Data Analitik dalam Big Data : Studi Kasus Implementasi di Pemerintahan. 12(1), 378–391.

Huda, N., Ayu, D., & Septya, R. (2025). Dampak Regulasi Batas Maksimum Manfaat Ekonomi Pinjaman Daring. www.celios.co.id

Ilmi, M. B., & Kusrini. (2025). Perbandingan Kinerja Algoritma Machine Learning dalam Deteksi Potensi Risiko HIV M. 11(April).

Kartika, R., Febri, M., Umam, S., & Majalengka, U. (2021). Tingkat Wanprestasi 90 Peer to Peer Lending Selama Pandemi COVID- 19 di Indonesia Wuhan Municipal Health Commission di China melaporkan adanya sekumpulan kasus Pneumonia pada 31 Desember 2019 dan hal tersebut menjadi awal mula teridentifikasinya varian vi. 14.

Nailendra, S. Y., Witanti, W., & Abdillah, G. (2025). Optimasi Prediksi Penjualan Retail Online Menggunakan LightGBM dan Hyperparameter Tuning. 1931–1942. https://doi.org/10.33364/algoritma/v.22-2.2551

Nur, M., Alamsyah, A., Silaban, S. D., Agles, D., Nor, R., Muhamad, L., Fadli, R., Sari, S. P., & Effendi, M. (2024). Analisis Faktor-Faktor Yang Mempengaruhi Jumlah Timbulan Sampah Di Provinsi Jawa Timur Menggunakan Metode Random Forest Regression. 53–60.

Oktaviani Putri Dita, Radittya Mahasputra Antara, & Agung Winarno. (2024). Tanggung Jawab Etis Penggunaan Artificial Intelligence Di Tanah Pendidikan: Formulasi Paradigma Baru Untuk Teknologi Otonom. Jurnal Manajemen Kewirausahaan Dan Teknologi, 1(4), 58–83. https://doi.org/10.61132/jumaket.v1i4.388

Pradana, A. E., Herawati, A. R., Dwimawanti, I. H., & Maesaroh. (2025). Tantangan Kecerdasan Buatan Dalam Implikasi Kebijakan Pemerintah di Indonesia: Studi Literatur.

Putra, F. A., Mirajdandi, S., Okmarizal, B., & Mulyanda, S. (2025). Prediksi Dropout Mahasiswa : Early-Warning Berbasis Enrollment dengan Machine Learning. 15(3), 465–473.

Rivansyah Dharma, R., & Rokhim, R. (2025). Analisis Fintech Lending Terhadap Ketimpangan Pendapatan Dengan Inklusi Keuangan Sebagai Variabel Intervening. Jurnal Manajemen Terapan Dan Keuangan (Mankeu), 14(03), 1349–1361.

Royani, N. D. (2025). Pengaruh outstanding loan, transaksi lender, dan transaksi borrower terhadap profitabilitas pada fintech peer-to-peer (P2P) lending syariah di Indonesia. http://etheses.uin-malang.ac.id/id/eprint/73482

Theresa, G., & Marlyna, H. (2024). Pelindungan Data Pribadi pada Layanan Pendanaan Berbasis Teknologi Informasi Pasca Undang-Undang Nomor 27 Tahun 2022 dan Undang-Undang Nomor 4 Tahun 2023. Jurnal Hukum & Pembangunan, 54(2). https://doi.org/10.21143/jhp.vol54.no2.1631

Villa Amilia, P., Nur Is Safira, S., Susilawati, S., & Fauziah, R. (2025). Media Hukum Indonesia (MHI) Kajian Hukum Terhadap Implementasi Layanan Fintech Berbasis Peer-to-Peer Lending dalam Perspektif Hukum Positif di Indonesia. Media Hukum Indonesia (MHI), 3(3), 441–448. https://doi.org/10.5281/zenodo.15649077

Wibowo, A. (2023). AI & ML Di Bidang Keuangan: Mengatasi Masalah Kompleks dan Aplikasi Lingkungan, Sosial dan Tatakelola(ESG). Prima Agust Teknik.




DOI: https://doi.org/10.31326/jisa.v9i1.2714

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Journal Name: JISA (Jurnal Informatika dan Sains)
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JISA (Jurnal Informatika dan Sains) is Published by Program Studi Teknik Informatika, Universitas Trilogi under Creative Commons Attribution-ShareAlike 4.0 International License.