weHelp: A Reference Architecture for Social Recommender Systems
Sheth
Swapneel Kalpesh
author
Columbia University. Computer Science
Arora
Nipun
author
Columbia University. Computer Science
Murphy
Christian
author
Columbia University. Computer Science
Kaiser
Gail E.
author
Columbia University. Computer Science
Columbia University. Computer Science
originator
contributor
text
Technical reports
New York
Department of Computer Science, Columbia University
2009
English
Recommender systems have become increasingly popular. Most of the research on recommender systems has focused on recommendation algorithms. There has been relatively little research, however, in the area of generalized system architectures for recommendation systems. In this paper, we introduce weHelp: a reference architecture for social recommender systems — systems where recommendations are derived automatically from the aggregate of logged activities conducted by the system's users. Our architecture is designed to be application and domain agnostic. We feel that a good reference architecture will make designing a recommendation system easier; in particular, weHelp aims to provide a practical design template to help developers design their own well-modularized systems.
Computer science
Columbia University Computer Science Technical Reports
CUCS-024-09
http://hdl.handle.net/10022/AC:P:9299
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2010-07-15 15:28:05 -0400
2011-11-09 09:27:25 -0500
1783
eng