Café Selection Recommendation System in Semarang City uses Collaborative Filtering Method with Item based Filtering Algorithm

Alldie Refkrisnatta, Dewi Handayani

Abstract


The café selection recommendation system in the city of Semarang aims to provide recommendations for users in finding the desired café according to the type of café expected. This recommendation system serves to predict an item that is of interest to the user. Implementation of recommendation system using Collaborative Filtering and Item Based Filtering algorithms. Collaborative filtering is a recommendation system algorithm where recommendations are given based on consideration of data from other users while the Item Based Filtering algorithm to provide recommendations based on similarities between customer tastes and café characteristics.


Keywords


Recommendation System; Collaborative Filtering; Item Based Filtering

Full Text:

PDF

References


Adi, P. S. (2015, July). Course Value Recommendation System Using Content-Based Filtering Methods. In the National Seminar on Informatics (SEMNASIF) (Vol. 1, No. 1).

Fathurrahman, M., Nurjanah, D., & Rismala, R. (2017). Recommendation System on Books Using Trustaware Recommendation Method. eProceedings of Engineering,4(3).

Jepriana, I. Wayan, and Shofwan Hanief. 2020. "Analysis and Implementation of Item-Based Collaborative Filtering Method for Concentration Recommendation System in Stmik Stikom Bali".

National Journal of Informatics Engineering Education: Janapati 9.2: 171-180.

Prasetyo, Bondan, Et Al. 2019. "Implementation of Item-Based Collaborative Filtering Method in The Provision of Recommendations for Prospective Buyers of Smartphone Accessories". Journal of

Exploratory Exploration 9.1: 17-27.

Prasetyo, B., Haryanto, H., Astuti, S., Astuti, E. Z., & Rahayu, Y. (2019). Implementation of Item-Based Collaborative Filtering Method in The Provision of Recommendations for Prospective Buyers of

Smartphone Accessories. Journal of Exploratory Informatics, 9(1), 17-27.

Setiawan, Yudi, Angga Nurwanto, and Aan Erlansari. 2019. "Implementation of Item Based Collaborative Filtering in The Provision of Android-Based Travel Agenda Recommendations". Pseudocode 6.1:13-20.

Wijaya, Anderias, and Deni Alfian. 2018. "Laptop Recommendation System Using Collaborative Filtering and Content-Based Filtering". Computech Journal & Business 12.1: 11-27.

Zhang, S., Yao, L., Sun, A., & Tay, Y. (2019). Deep learning based recommender system: A survey and new perspectives. ACM computing surveys (CSUR), 52(1), 1-38.

Alhijawi, B., & Kilani, Y. (2020). A collaborative filtering recommender system using genetic algorithm. Information Processing & Management, 57(6), 102310.

Thakkar, P., Varma, K., Ukani, V., Mankad, S., & Tanwar, S. (2019). Combining user-based and item based collaborative filtering using machine learning. In Information and Communication Technology for Intelligent Systems: Proceedings of ICTIS 2018, Volume 2 (pp. 173-180). Springer Singapore.




DOI: https://doi.org/10.26905/jeemecs.v6i1.7446

Refbacks

  • There are currently no refbacks.




JEEMECS (Journal of Electrical Engineering, Mechatronic and Computer Science)
Electrical Engineering Department, Faculty of Engineering



Mailling Address:

  • Address: Taman Agung Street No. 1, Sukun, Malang City, East Java, 65146, Indonesia.
  • Website: http://jurnal.unmer.ac.id/index.php/jeemecs/
  • Phone: +62 831 - 1205 - 2815 
  • Email: jeemecs@unmer.ac.id


JEEMECS (Journal of Electrical Engineering, Mechatronic and Computer Science) is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License Creative Commons License

Copyright ©2020 University of Merdeka Malang Powered by Open Journal Systems.