A Review on Application of Web Recommendation System for Online Applications
Recommendation systems are offers that powerful personalization and efficiency features and it elaborated in many online environments. Research on developing a new recommender system techniques and methods and it provides great opportunities to business. This paper is used to research the recent developments in e-commerce recommendation systems. The paper was summarized and compared the latest improvements in e-commerce recommendation systems from the outlook of e-vendors. The examining provides a thorough analysis of current advancements and attempts to identify the existing issues in recommendation systems, by the review of recent publications.
Barragáns-Martínez, Ana Belén, et al. "A hybrid content-based and item-based collaborative filtering approach to recommend TV programs enhanced with singular value decomposition." Information Sciences 180.22 (2010): 4290-4311.
Bobadilla, Jesús, et al. "Recommender systems survey." Knowledge-based systems 46 (2013): 109-132.
Eirinaki, Magdalini, et al. "Recommender systems for large-scale social networks: A review of challenges and solutions." (2018): 413-418.
Guo, Yan, et al. "Mobile e-commerce recommendation system based on multi-source information fusion for sustainable e-business." Sustainability 10.1 (2018): 147.
Hernando, A., Bobadilla, J., & Ortega, F. (2016). Knowledge-Based Systems A non-negative matrix factorization for collaborative filtering recommender systems based on a Bayesian probabilistic model, 97, 188–202. doi:10.1016/j.knosys.2015.12.018.
James, Ndengabaganizi Tonny, and K. Rajkumar. "Product recommendation systems based on hybrid approach technology." (2017).
Karimova, Farida. "A survey of E-commerce recommender systems." European Scientific Journal 12.34 (2016): 75-89.
Kitayama, D., Zaizen, M., Sumiya, K. (2015). An E-commerce Recommender System Using Measures of Specialty Shops, 369–383. Doi: 10.1007/978-94-017-9588-3
Kotkov, Denis, Shuaiqiang Wang, and Jari Veijalainen. "A survey of serendipity in recommender systems." Knowledge-Based Systems 111 (2016): 180-192.
Kumar, PN Vijaya, and V. Raghunatha Reddy. "A survey on recommender systems (RSS) and its applications." International Journal of Innovative Research in Computer and Communication Engineering 2.8 (2014): 5254-5260.
Lekakos, George, and Petros Caravelas. "A hybrid approach for movie recommendation." Multimedia tools and applications 36.1-2 (2008): 55-70.
Peska, L., & Vojtas, P. (2016). Using Implicit Preference Relations to Improve Recommender Systems. Journal on Data Semantics. Doi: 10.1007/s13740-016-0061-8
Puglisi, Silvia, et al. "On content-based recommendation and user privacy in social-tagging systems." Computer Standards & Interfaces 41 (2015): 17-27.
Wang, Xinxi, and Ye Wang. "Improving content-based and hybrid music recommendation using deep learning." Proceedings of the 22nd ACM international conference on Multimedia. ACM, 2014.
Yoshii, Kazuyoshi, et al. "Hybrid Collaborative and Content-based Music Recommendation Using Probabilistic Model with Latent User Preferences." ISMIR. Vol. 6. 2006.
- There are currently no refbacks.
This work is licensed under a Creative Commons Attribution 3.0 License.