Publication | Closed Access
Exploiting place features in link prediction on location-based social networks
526
Citations
21
References
2011
Year
Unknown Venue
EngineeringNetwork AnalysisLink Prediction SpaceLocation-aware Social MediumLink Prediction SystemLocalizationLink PredictionComputational Social ScienceSocial MediaData ScienceData MiningSocial Medium MiningSocial Network AnalysisKnowledge DiscoveryComputer ScienceGeosocial NetworkNetwork SciencePlace FeaturesSocial ComputingLink Prediction SystemsBusinessLocation InformationLocation Management
Link prediction systems have been largely adopted to recommend new friends in online social networks using data about social interactions. With the soaring adoption of location-based social services it becomes possible to take advantage of an additional source of information: the places people visit. In this paper we study the problem of designing a link prediction system for online location-based social networks. We have gathered extensive data about one of these services, Gowalla, with periodic snapshots to capture its temporal evolution. We study the link prediction space, finding that about 30% of new links are added among "place-friends", i.e., among users who visit the same places. We show how this prediction space can be made 15 times smaller, while still 66% of future connections can be discovered. Thus, we define new prediction features based on the properties of the places visited by users which are able to discriminate potential future links among them.
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