Clustering of MSMEs Based on Assets and Turnover Using the K-Means Algorithm
Kata Kunci:
MSMEs, K-Means algorithm, Clustering, Assets, Turnover, Business ClassificationAbstrak
Effective UMKM assistance requires business identification and grouping. Officially, UMKM in Indonesia are divided into Micro, Small, and Medium based on assets and turnover. This research aims to group UMKM in a Regency of South Sumatra by applying the K-Means Clustering algorithm using these two variables. The research stages include business understanding, data understanding, data processing, modeling, evaluation, and dissemination. From 15 test data, this study successfully applied K-Means to classify UMKM. The result was the formation of 3 clusters, consisting of 8 data (53%) in Cluster 1, 6 data (40%) in Cluster 2, and 1 data (7%) in Cluster 3. This result has been validated using RapidMiner and shows identical outcomes. This grouping can serve as a basis for stakeholders to provide more effective assistance
Unduhan
Referensi
Aggarwal, C. C. (2021). Data mining: The textbook (2nd ed.). Springer.
Daniel T. Larose, & Larose, C. D. (2014). Discovering knowledge in data. John Wiley & Sons.
Fahmi, D., Halimah, I., & Yusuf, Y. (2024). Sosialisasi Penyusunan Laporan Keuangan Guna Meningkatkan Usaha Umkm di Pokdarwis Ekowisata Keranggan Tangerang Selatan. Jurnal Abdi Masyarakat Multidisiplin, 3(2), 13-18.
Garcia, L., & Patel, R. (2021). A review of data preprocessing techniques for machine learning. Journal of Data Science, 19(2), 113–130.
Hidayah, A. (2021). Implementing Data Clustering to Identify Capital Allocation for Small and Medium Sized Enterprises (SMEs). ASEAN Marketing Journal, 10(1), 5.
Jain, A. K. (2022). Advancements in clustering algorithms. IEEE Transactions on Pattern Analysis and Machine Intelligence, 44(1), 20–35.
Jonathan, J. K., Herwindiati, D. E., Ferdinand, K., & Jong, F. (2024, October). Implementation of Fuzzy C-Means for Clustering MSMEs in Jambi Province. In 2024 Ninth International Conference on Informatics and Computing (ICIC) (pp. 1-5). IEEE.
Kementerian Koordinator Bidang Perekonomian Republik Indonesia. (2021). UMKM menjadi pilar penting dalam perekonomian Indonesia. https://www.ekon.go.id/publikasi/detail/2939/dukungan-pemerintah-bagi-umkm-agar-pulih-di-masa-pandemi
Magdalena, L., & Fahrudin, R. (2020). Penerapan data mining untuk koperasi se-Jawa Barat menggunakan metode clustering pada Kementerian Koperasi dan UKM. Jurnal Digit, 9(2), 190. https://doi.org/10.51920/jd.v9i2.120
Puntoriza, P., & Fibriani, C. (2020). Analisis persebaran UMKM Kota Malang menggunakan cluster K-Means. JOINS (Journal of Information Systems), 5(1), 86–94. https://doi.org/10.33633/joins.v5i1.3469
Republik Indonesia. (2008). Undang-Undang Nomor 20 Tahun 2008 tentang Usaha Mikro, Kecil, dan Menengah.
Schröder, M., & Wirth, R. (2022). The CRISP-DM methodology in practice: A systematic review. International Journal of Data Science and Analytics, 13(1), 1–24.
Sukmadewanti, I., Arifudin, R., & Sugiharti, E. (2018). Use of K-means clustering and analytical methods hierarchy process in determining the type of msme financing in semarang city. Sci, J. Inform, 5(2), 148-158.
Susanti, N., Prasetyo, H., & Lestari, M. (2023). Kajian potensi e-commerce sebagai solusi ekspansi pasar UMKM pasca pandemi COVID-19. Jurnal Ekonomi Digital, 5(1), 42–50.
Sutramiani, N. P., Arthana, I., Aurelia, S., Fauzi, M., & Surya Darma, I. (2024). The Performance Comparison of DBSCAN and K-Means Clustering for MSMEs Grouping based on Asset Value and Turnover. Journal of Information Systems Engineering & Business Intelligence, 10(1).
Tan, P.-N., Steinbach, M., & Karpatne, A. (2024). Introduction to data mining (3rd ed.). Pearson.
Widanengsih, E., & Yusuf, Y. (2025). Design of an Application-Based Sales Information System for Koperasi XYZ. Jurnal Multidisiplin Sahombu, 5(02), 538-552.











