DocumentCode
2456870
Title
LARS: A Location-Aware Recommender System
Author
Levandoski, Justin J. ; Sarwat, Mohamed ; Eldawy, Ahmed ; Mokbel, Mohamed F.
Author_Institution
Microsoft Res., Redmond, WA, USA
fYear
2012
fDate
1-5 April 2012
Firstpage
450
Lastpage
461
Abstract
This paper proposes LARS, a location-aware recommender system that uses location-based ratings to produce recommendations. Traditional recommender systems do not consider spatial properties of users nor items, LARS, on the other hand, supports a taxonomy of three novel classes of location-based ratings, namely, spatial ratings for non-spatial items, non-spatial ratings for spatial items, and spatial ratings for spatial items. LARS exploits user rating locations through user partitioning, a technique that influences recommendations with ratings spatially close to querying users in a manner that maximizes system scalability while not sacrificing recommendation quality. LARS exploits item locations using travel penalty, a technique that favors recommendation candidates closer in travel distance to querying users in a way that avoids exhaustive access to all spatial items. LARS can apply these techniques separately, or in concert, depending on the type of location-based rating available. Experimental evidence using large-scale real-world data from both the Foursquare location-based social network and the Movie Lens movie recommendation system reveals that LARS is efficient, scalable, and capable of producing recommendations twice as accurate compared to existing recommendation approaches.
Keywords
query processing; recommender systems; social networking (online); LARS; MovieLens movie recommendation system; foursquare location-based social network; large-scale real-world data; location-aware recommender system; location-based ratings; nonspatial ratings for spatial items; spatial ratings for nonspatial items; spatial ratings for spatial items; system scalability maximization; taxonomy; travel distance; travel penalty; user partitioning; user query; Collaboration; Computational modeling; Maintenance engineering; Merging; Motion pictures; Recommender systems; Scalability;
fLanguage
English
Publisher
ieee
Conference_Titel
Data Engineering (ICDE), 2012 IEEE 28th International Conference on
Conference_Location
Washington, DC
ISSN
1063-6382
Print_ISBN
978-1-4673-0042-1
Type
conf
DOI
10.1109/ICDE.2012.54
Filename
6228105
Link To Document