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
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;
Conference_Titel :
Data Engineering (ICDE), 2012 IEEE 28th International Conference on
Conference_Location :
Washington, DC
Print_ISBN :
978-1-4673-0042-1
DOI :
10.1109/ICDE.2012.54