Matching Points of Interest from Different Social Networking Sites
Tatjana Scheffler; Rafael Schirru; Paul Lehmann
In: Birte Glimm; Antonio Krüger (Hrsg.). KI 2012: Advances in Artificial Intelligence. Pages 245-248, Lecture Notes in Computer Science/ Lecture Notes in Artificial Intelligence (LNAI), Vol. 7526, ISBN 978-3-642-33346-0, Springer, Berlin / Heidelberg, 9/2012.
Valuable user-generated information about locations (points of interest, POIs) is stored in various online social media platforms. Merging the data associated with one POI is hard because the platforms lack common identifiers. In addition, user-generated data is commonly faulty or contradictory. Here we present an approach matching POIs from Qype and Facebook Places to their counterparts in OpenStreetMap. The algorithm uses different similarity measures taking the geographic distance of POIs into account as well as the string similarity of selected metadata fields, showing good results.