Analisis dan Evaluasi Kredit Macet Anggota Koperasi pada Koperasi Simpan Pinjam Cu Mera Ndi Ate

Authors

  • Marjelin Putri Ndaparoka Universitas Stella Maris Sumba
  • Stefanus D.I. Mau Universitas Stella Maris Sumba
  • Sihang Gregorius Bali Mema Universitas Stella Maris Sumba

DOI:

https://doi.org/10.62951/modem.v4i1.771

Keywords:

Data Mining, Non-Performing Loans, Orange Data Mining, Sentiment Analysis, Unsupervised Learning

Abstract

Savings and Loan Cooperatives (KSP) play a vital role in expanding community access to capital, especially within the informal sector. Nevertheless, non-performing loans remain a persistent challenge that can threaten liquidity and long-term institutional sustainability. KSP CU Mera Ndi Ate faces similar issues, which are assumed to stem not only from administrative weaknesses but also from members’ perceptions and behavioral factors. This research aims to examine the potential causes of non-performing loans through text-based sentiment analysis using an unsupervised learning approach. A quantitative method with a data mining framework was applied. Data were gathered through interviews, observations, documentation, and 200 customer opinion texts processed using the Orange Data Mining application. The analytical stages included preprocessing, corpus development, feature extraction, sentiment clustering, and visualization. Because the dataset lacked predefined labels, unsupervised learning was used to identify naturally emerging sentiment patterns. Findings reveal a predominance of critical sentiments related to credit assessment procedures and service quality. The highest sentiment score (75) concerned insufficient creditworthiness evaluation, followed by concerns about service efficiency (66.6667). These insights suggest that improving assessment accuracy and service quality may help reduce non-performing loans.

Downloads

Download data is not yet available.

References

Andini, W. (2022). Pelaksanaan Pembiayaan KUR ( Kredit Usaha Rakyat ) Pada Bank Sumsel Babel Syariah Capem Muhammadiyah. Jurnal Ilmiah Mahasiswa Perbankan Syariah (JIMPA), 2(1), 221–230.

Ardiyanto, T. (2023). KREDIT MENGGUNAKAN METODE NAIVE BAYES DAN ALGORITMA C4 . 5. Jurnal SIMADA, 6(2), 1–11.

Faiza, I. M., & Andriani, W. (2022). Tinjauan Pustaka Sistematis : Penerapan Metode Machine Learning untuk Deteksi Bencana Banjir. Jurnal Minfo Polgan, 11(September), 59–63.

Habibulloh, W. M., Topiq, S., Adhirajasa, U., Sanjaya, R., Adhirajasa, U., & Sanjaya, R. (2021). ALGORITMA NAIVE BAYES PADA KSP. JURNAL RESPONSIF, 3(1), 92–99.

Haryani, D. S., & Fauzar, S. (2022). Efektivitas Media Sosial Instagram Sebagai Media Promosi Pada Umkm Chacha Flowers. Manajerial Dan Bisnis Tanjungpinang, 4(1), 12–20. https://doi.org/10.52624/manajerial.v4i1.2227

Hasanah, N., & Fatmawati, F. (2023). Pengaruh Kualitas Produk Terhadap Kepuasan Konsumen Pada Katering Shobia Di Kelurahan Sungai Malang Kecamatan Amuntai Tengah. Inovatif Jurnal Administrasi Niaga, 5(2), 41–48. https://doi.org/10.36658/ijan.5.2.107

Nurcahyani, D., Sari, S. N., & Hermawan, A. (2023). Analisis Perbandingan Biaya Pembangunan Rumah Konvensional 1 Lantai Tipe 40 Menggunakan AHSP 2016 dan AHSP 2022 (Studi Kasus : Rumah di Triharjo, Kabupaten Sleman). Jurnal Ilmiah Teknik Unida, 4(1), 191–202. https://doi.org/10.55616/jitu.v4i1.577

Renaldi. (2023). Pendugaan Kredit Macet Pada Koperasi Simpan Pinjam Flamboyan Binaan PPSW Jakarta Dengan Menggunakan Komparasi Algoritma Naïve Bayes. ALGOR, 1, 66–74.

Shita, R. T. (2024). PENERAPAN ALGORITMA NAIVE BAYES UNTUK PREDIKSI APPLICATION OF NAIVE BAYES ALGORITHM FOR PREDICTION OF. SENAFTI, 3(September), 558–567.

Sintia, S., Khautsar, A., Puspitasari, D., & Mustika, P. (2022). Algoritma Naïve Bayes Untuk Memprediksi Kredit Macet Pada Koperasi Simpan Pinjam. JURNAL INFORMATIKA UPGRIS, 4(2).

Tyvanov, V., Syafel, H., Meilani, C., Permohonan, A., Dalam, K., Tyvanov, V., Syafel, H., & Meilani, C. (2025). ANALISIS PERMOHONAN KREDIT DALAM UPAYA MENCEGAH KREDIT MACET DI PERUSAHAAN MANUFAKTUR. Jurnal Eko-Bisma, 4(1), 9–18.

Utama, D. S., Asriningtias, Y., Studi, P., Informatika, T., Yogyakarta, U. T., Siliwangi, J., Road, R., & Jombor, U. (2022). PERBANDINGAN WAKTU AKSES ALGORITMA FISHER- YATES SHUFFEL DAN LINEAR CONGRUENT METHOD PADA SOAL TRY-OUT BERBASIS WEB. JISKa, 2(2), 93–101.

Wijoyo, H. (2022). Analisis teknik wawancara ( pengertian wawancara, bentuk- bentuk pertanyaan wawancara ) dalam penelitian kualitatif bagi mahasiswa teologi dengan tema pekabaran injil melalui penerjemahan alkitab. Academia.Edu, 2(1), 1–10.

Willem, A., Tumbel, A. L., & Samadi, R. L. (2022). Analisis Efektivitas Marketing Media Sosial Facebook Terhadap Keputusan Pelanggan D’Brothers Laundry. Jurnal EMBA, 8(1), 156–165.

Yuhana, A. N., & Aminy, F. A. (2022). Optimalisasi Peran Guru Pendidikan Agama Islam Sebagai Konselor dalam Mengatasi Masalah Belajar Siswa. Jurnal Penelitian Pendidikan Islam, 7(1), 79. https://doi.org/10.36667/jppi.v7i1.357

Downloads

Published

2026-01-30

How to Cite

Marjelin Putri Ndaparoka, Stefanus D.I. Mau, & Sihang Gregorius Bali Mema. (2026). Analisis dan Evaluasi Kredit Macet Anggota Koperasi pada Koperasi Simpan Pinjam Cu Mera Ndi Ate. Modem : Jurnal Informatika Dan Sains Teknologi., 4(1), 245–260. https://doi.org/10.62951/modem.v4i1.771

Similar Articles

<< < 1 2 3 4 5 6 7 8 > >> 

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

Most read articles by the same author(s)