[en] This work presents a new matrix factorization recommender system approach, that takes repeated interaction into account. We analyze if and how users' repeated interaction behavior-such as repeat purchases can be integrated into a recommender system. We develop a method that takes advantage of this additional data dimension that is studied in many other fields to derive useful conclusions. Furthermore, we empirically test our method on real-life retailer data and on the Last.fm dataset. We compare our algorithm with popular matrix factorization approaches. Results indicate that our method manages to slightly outperform the existing methods.
Disciplines :
Library & information sciences
Author, co-author :
Sommer, Felix
Lecron, Fabian ; Université de Mons > Faculté Polytechnique > Management de l'Innovation Technologique
Fouss, François
Language :
English
Title :
Recommender Systems: The case of repeated interaction in Matrix Factorization
Publication date :
23 August 2017
Event name :
IEEE/WIC/ACM International Conference on Web Intelligence
Event place :
Leipzig, Germany
Event date :
2017
Audience :
International
Journal title :
WI '17: Proceedings of the International Conference on Web Intelligence
Publisher :
Association for Computing Machinery, New-York, Unknown/unspecified
Peer reviewed :
Peer reviewed
Research unit :
F113 - Management de l'Innovation Technologique
Research institute :
R300 - Institut de Recherche en Technologies de l'Information et Sciences de l'Informatique