DocumentCode
1528451
Title
Web-Scale Media Recommendation Systems
Author
Dror, Gideon ; Koenigstein, Noam ; Koren, Yehuda
Author_Institution
Yahoo! Research Labs, Haifa, Israel
Volume
100
Issue
9
fYear
2012
Firstpage
2722
Lastpage
2736
Abstract
Modern consumers are inundated with choices. A variety of products are offered to consumers, who have unprecedented opportunities to select products that meet their needs. The opportunity for selection also presents a time-consuming need to select. This has led to the development of recommender systems that direct consumers to products expected to satisfy them. One area in which such systems are particularly useful is that of media products, such as movies, books, television, and music. We study the details of media recommendation by focusing on a large scale music recommender system. To this end, we introduce a music rating data set that is likely to be the largest of its kind, in terms of both number of users, items, and total number raw ratings. The data were collected by Yahoo! Music over a decade. We formulate a detailed recommendation model, specifically designed to account for the data set properties, its temporal dynamics, and the provided taxonomy of items. The paper demonstrates a design process that we believe to be useful at many other recommendation setups. The process is based on gradual modeling of additive components of the model, each trying to reflect a unique characteristic of the data.
Keywords
Collaboration; Data models; Media; Motion pictures; Music; Recommender systems; Collaborative filtering; Yahoo! Music; matrix factorization; recommender systems;
fLanguage
English
Journal_Title
Proceedings of the IEEE
Publisher
ieee
ISSN
0018-9219
Type
jour
DOI
10.1109/JPROC.2012.2189529
Filename
6209384
Link To Document