Penerapan Sistem Rekomendasi Produk pada Marketplace Menggunakan Metode Colaborative Filtering
DOI:
https://doi.org/10.61132/mars.v3i5.1094Keywords:
Collaborative Filtering, Marketplace, Personalization, Products, Recommendation SystemAbstract
The rapid development of digital technology has significantly transformed commercial activities, particularly through the emergence of marketplaces as platforms for online transactions. The vast number of products available in a marketplace often creates difficulties for users in finding items that suit their needs and preferences. To address this challenge, a recommendation system is required to provide personalized and relevant product suggestions. This study discusses the implementation of a product recommendation system in a marketplace using the Collaborative Filtering method. This method works by leveraging information from users’ previous behavior, such as purchase history, ratings, and similarity of preferences with other users, to generate more accurate product recommendations. The Collaborative Filtering approach has proven effective in identifying user preference patterns based on relationships between users as well as between items. This study employs user interaction data such as ratings and shopping activities as the processing foundation. The process involves data collection, preprocessing, calculation of similarity between users or products, and generating recommendation lists. The results indicate that this method enhances the shopping experience by providing relevant product suggestions tailored to user interests, thereby increasing customer satisfaction and potentially improving sales performance in the marketplace. Thus, the application of a Collaborative Filtering-based recommendation system not only simplifies product discovery for users but also offers strategic advantages for marketplace operators in digital business competition
References
Aditya Nugraha, Y., Rubhasy, A., & Fauzi Wijaya, Y. (2024). Penerapan sistem rekomendasi aplikasi marketplace Giftmoment pada proyek akhir di PT Gits Indonesia menggunakan algoritma Collaborative Filtering. Jurnal Komputer, Informasi dan Teknologi, 4(1).
Al Mustofa, M. H., Nurmalitasari, N., & Nurchim, N. (2024). Pengembangan model rekomendasi produk UMKM Albis menggunakan item-based collaborative filtering. Buletin Sistem Informasi dan Teknologi Islam, 5(2), 99–105. https://doi.org/10.33096/busiti.v5i2.2271
Anugerah Rahayu Kasim, E., Ransi, N., & Teknik Informatika, J. (2024). Sistem rekomendasi produk UMKM menggunakan algoritma user-based collaborative filtering berbasis website. Jurnal Sisfotenika, 14(2), 153–162. https://stmikpontianak.org/ojs/index.php/sisfotenika
Aryani, Susilo, B., & Setiawan, Y. (2019). Perancangan sistem rekomendasi pemilihan cinderamata khas Bengkulu berbasis e-marketplace. Jurnal Rekursif, 7(1), 70–76. http://ejournal.unib.ac.id/index
Belay, B. S. (2022). No title הכי קשה לראות את מה שבאמת לנגד העינים. Haaretz, 5(8.5.2017), 2003–2005.
Delya, D., Mulyawan, B., & Lauro, M. D. (2022). E-commerce Blessed Party dengan sistem rekomendasi Apriori dan Collaborative Filtering. Jurnal Ilmu Komputer dan Sistem Informasi, 10(1). https://doi.org/10.24912/jiksi.v10i1.17851
Devi Nurhayati, S., Widayani, W., & Hartatik. (2021). Sistem rekomendasi wisata kuliner di Yogyakarta dengan metode item-based collaborative filtering. JACIS: Journal Automation Computer Information System, 1(2), 55–63. https://manganenakyog.my.id/
Hariri, F. R., & Rochim, L. W. (2022). Sistem rekomendasi produk aplikasi marketplace berdasarkan karakteristik pembeli menggunakan metode user-based collaborative filtering. Teknika, 11(3), 208–217. https://doi.org/10.34148/teknika.v11i3.538
Ilmiah, J., Informasi, S., Ketaren, R. A., & Faradillah, Y. (2025). Implementasi metode collaborative filtering berdasarkan preferensi konsumen pada penjualan buket (Bouquet) Universitas Harapan Medan, Indonesia. Jurnal Ilmiah Sistem Informasi, 5(1).
Rachmaniar, A., Widayati, S., Rokoyah, K., Studi Manajemen Informatika, P., Studi Sistem Informasi, P., & Jakarta STI, S. (2025). Sistem rekomendasi produk e-commerce menggunakan collaborative filtering dan content-based filtering (E-commerce product recommendation system using collaborative filtering and content-based filtering). Journal of Information System, Informatics and Computing Issue Period, 9(1), 40–54. https://doi.org/10.52362/jisicom.v9i1.1904
Ramadhani, T., Nabilah, S., Abimayu, A., & Loi, T. (2025). Pengembangan sistem rekomendasi produk e-commerce menggunakan algoritma collaborative filtering. Journal of Artificial Intelligence and Digital Business (RIGGS), 4(2), 4848–4854. https://ejournal.ugm.ac.id/index.php/jti/article/download/76543/45678
Sari, Y. P. P., Seniwati, E., & Rahman, B. (2025). Metode item-based collaborative filtering untuk rekomendasi produk skincare. Journal Automation Computer Information System, 5(1), 93–104. https://doi.org/10.47134/jacis.v5i1.113
Sebastian, R., Witanti, W., & Abdillah, G. (2024). Sistem rekomendasi produk clothing menggunakan metode collaborative filtering. Seminar Nasional CORISINDO, 360–366.
Simangunsong, A., Mahdalena Simanjorang, R., Amalia, F., & Khairunnisa, P. (2025). Implementasi sistem rekomendasi dengan collaborative filtering dalam pemilihan produk skincare. Jurnal SAINTIKOM (Jurnal Sains Manajemen Informatika dan Komputer), 24(1), 56–63. https://ojs.trigunadharma.ac.id/index.php/jis/index
Waskito, M. R., Rahajoe, A. D., & Nurlaili, A. L. (2024). Implementasi metode collaborative filtering menggunakan algoritma cosine similarity dan jaccard similarity pada sistem e-commerce. Jurnal Informatika dan Teknik Elektro Terapan, 12(3S1), 4307–4316. https://doi.org/10.23960/jitet.v12i3s1.5315.
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