Title :
A unified approach of factor models and neighbor based methods for large recommender systems
Author :
Takács, Gábor ; Pilászy, István ; Németh, Bottyán ; Tikk, Domonkos
Author_Institution :
Szechenyi Istvan Univ., Gyor
Abstract :
Matrix factorization (MF) based approaches have proven to be efficient for rating-based recommendation systems. In this paper, we propose a hybrid approach that alloys an improved MF and the so-called NSVD1 approach, resulting in a very accurate factor model. After that, we propose a unification of factor models and neighbor based approaches, which further improves the performance. The approaches are evaluated on the Netflix Prize dataset, and they provide very low RMSE, and favorable running time. Our best solution presented here with Quiz RMSE 0.8851 outperforms all published single methods in the literature.
Keywords :
data mining; groupware; matrix decomposition; Netflix Prize dataset; RMSE; factor models; large recommender systems; matrix factorization; neighbor based methods; rating based recommendation systems; Collaborative work; Gravity; History; IEEE news; Information filtering; Information filters; Kernel; Least squares methods; Motion pictures; Recommender systems;
Conference_Titel :
Applications of Digital Information and Web Technologies, 2008. ICADIWT 2008. First International Conference on the
Conference_Location :
Ostrava
Print_ISBN :
978-1-4244-2623-2
Electronic_ISBN :
978-1-4244-2624-9
DOI :
10.1109/ICADIWT.2008.4664342