Title :
Reinforcement learning architecture for Web recommendations
Author :
Golovin, Nick ; Rahm, Erhard
Author_Institution :
Leipzig Univ., Germany
Abstract :
A large number of Web sites use online recommendations to make Web users interested in their products or content. Since no single recommendation approach is always best it is necessary to effectively combine different recommendation algorithms. This paper describes the architecture of a rule-based recommendation system which combines recommendations from different algorithms in a single recommendation database. Reinforcement learning is applied to continuously evaluate the users´ acceptance of presented recommendations and to adapt the recommendations to reflect the users´ interests. We describe the general architecture of the system, the database structure, the learning algorithm and the test setting for assessing the quality of the approach.
Keywords :
Web sites; data mining; distributed databases; learning (artificial intelligence); relevance feedback; Web recommendations; Web sites; Web users; database structure; learning algorithm; online recommendations; recommendation algorithms; recommendation database; reinforcement learning architecture; rule-based recommendation system; system architecture; users acceptance evaluation; users interests; Character generation; Customer satisfaction; Databases; Feedback loop; History; Learning; Prototypes; Service oriented architecture; System testing; Usability;
Conference_Titel :
Information Technology: Coding and Computing, 2004. Proceedings. ITCC 2004. International Conference on
Print_ISBN :
0-7695-2108-8
DOI :
10.1109/ITCC.2004.1286487