STIMATA Rule Adviser: Sistem Rekomendasi Produk e-Commerce

Authors

  • Tubagus Mohammad Akhriza STMIK PPKIA Pradnya Paramita (STIMATA) Malang
  • Dwi Safiroh Utsalina STMIK PPKIA Pradnya Paramita (STIMATA) Malang

Keywords:

sistem rekomendasi, produk, e-commerce, interaktif, popularity-aware

Abstract

A product recommendation system is a necessity for e-commerce applications in order to recommend a series of products related to a product being viewed or previously purchased by the user of the e-commerce application. This article introduces STIMATA Rule Adviser, an interactive recommendation system developed using an association rule mining approach on data streams so that the recommended products are popularity-aware, meaning they are products that are always trending, currently popular, or products that are at risk because they are no longer selling well. This system is equipped with features that allow users to interact with the recommendation list. Users can choose the level of similarity and popularity of products in the recommendation list with the product they are currently viewing. User interactions with the provided recommendations can be visually monitored through the administrator's dashboard.

References

Anonim, “Society 5.0,” Cabinet Office, Council for Science, Technology and Innovation, 2015. https://www8.cao.go.jp/cstp/english/society5_0/index.html (accessed Jan. 06, 2020).

T. Ghosh, R. Saha, A. Roy, S. Misra, and N. S. Raghuwanshi, “AI-Based Communication-as-a-Service for Network Management in Society 5.0,” IEEE Trans. Netw. Serv. Manag., vol. 18, no. 4, 2021, doi: 10.1109/TNSM.2021.3119531.

Z. Huang and P. Stakhiyevich, “A Time-Aware Hybrid Approach for Intelligent Recommendation Systems for Individual and Group Users,” Complexity, vol. 2021, 2021, doi: 10.1155/2021/8826833.

E. Hikmawati, N. U. Maulidevi, and K. Surendro, “Adaptive rule: A novel framework for recommender system,” ICT Express, vol. 6, no. 3, pp. 214–219, 2020, doi: 10.1016/j.icte.2020.06.001.

Y. Liu, “Survey of Intelligent Recommendation of Academic Information in University Libraries Based on Situational Perception Method,” J. Educ. Learn., vol. 9, no. 2, 2020, doi: 10.5539/jel.v9n2p197.

A. Spencer, “Leading Design and Development of the Advertising Recommender System at Tencent: An Interview with Xiangting Kong,” Toward Data Science2, 2021.

P. Symeonidis, A. Nanopoulos, and Y. Manolopoulos, “MoviExplain: A Recommender System with Explanations,” in [RecSys2009]Proceedings of the 3rd ACM conference on Recommender systems, 2009. doi: 10.1145/1639714.1639777.

D. Chong, “Deep Dive into Netflix’s Recommender System,” Toward Data Science, 2020. https://towardsdatascience.com/deep-dive-into-netflixs-recommender-system-341806ae3b48

T. M. Akhriza and I. D. Mumpuni, “A Time-Window Approach to Recommending Emerging and On-the-rise Items,” in 2022 Seventh International Conference on Informatics and Computing (ICIC), 2022.

A. Rizqyta, “Mengulik Peran Artificial Intelligence Dalam Perkembangan Teknologi Lewat START Summit Extension,” Tokopedia.com, 2020. https://www.tokopedia.com/blog/mengulik-peran-artificial-intelligence-dalam-perkembangan-teknologi-lewat-start-summit-extension/?utm_source=google&utm_medium=organic

Alibaba, “Lazada Kenalkan 5 Fitur Baru LazMall, Permudah Konsumen Temukan Produk Berkualitas,” Alibaba News Bahasa Indonesia, 2020.

A. S. Wardani, “Go-Food Bakal Makin Pintar Rekomendasikan Makanan ke Pengguna,” Liputan6.com, 2018. https://www.liputan6.com/tekno/read/3220971/go-food-bakal-makin-pintar-rekomendasikan-makanan-ke-pengguna

K. M. Bates, J. Paas, B. Wang, B. Xu, and P. Yousefi, “Recommender system for on-line articles and documents,” US20090300547, 2009

T. M. Akhriza, Y. Ma, and J. Li, “Novel Push-Front Fibonacci Windows Model for Finding Emerging Patterns with Better Completeness and Accuracy:,” ETRI J., vol. 40, no. 1, 2018, doi: 10.4218/etrij.18.0117.0175.

T. M. Akhriza, Y. Ma, and J. Li, “A novel Fibonacci windows model for finding emerging patterns over online data stream,” in 2015 International Conference on Cyber Security of Smart Cities, Industrial Control System and Communications, SSIC 2015 - Proceedings, 2015. doi: 10.1109/SSIC.2015.7245323.

L. D. Adistia, T. M. Akhriza, and S. Jatmiko, “Sistem Rekomendasi Buku untuk Perpustakaan Perguruan Tinggi Berbasis Association Rule,” J. RESTI (Rekayasa Sist. dan Teknol. Informasi), vol. 3, no. 2, 2019, doi: 10.29207/resti.v3i2.971.

Downloads

Published

2023-10-17

How to Cite

Tubagus Mohammad Akhriza, & Dwi Safiroh Utsalina. (2023). STIMATA Rule Adviser: Sistem Rekomendasi Produk e-Commerce. Prosiding SISFOTEK, 7(1), 288 - 294. Retrieved from https://seminar.iaii.or.id/index.php/SISFOTEK/article/view/409

Issue

Section

3. Data dan Diseminasi Informasi