Litcius/Paper detail

GeoVectors: A Linked Open Corpus of OpenStreetMap Embeddings on World Scale

Nicolas Tempelmeier, Simon Gottschalk, Elena Demidova

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Abstract

OpenStreetMap (OSM) is currently the richest publicly available information source on geographic entities (e.g., buildings and roads) worldwide. However, using OSM entities in machine learning models and other applications is challenging due to the large scale of OSM, the extreme heterogeneity of entity annotations, and a lack of a well-defined ontology to describe entity semantics and properties. This paper presents GeoVectors - a unique, comprehensive world-scale linked open corpus of OSM entity embeddings covering the entire OSM dataset and providing latent representations of over 980 million geographic entities in 180 countries. The GeoVectors corpus captures semantic and geographic dimensions of OSM entities and makes these entities directly accessible to machine learning algorithms and semantic applications. We create a semantic description of the GeoVectors corpus, including identity links to the Wikidata and DBpedia knowledge graphs to supply context information. Furthermore, we provide a SPARQL endpoint - a semantic interface that offers direct access to the semantic and latent representations of geographic entities in OSM.

Topics & Concepts

SPARQLComputer scienceSemantics (computer science)Linked dataOntologyInformation retrievalContext (archaeology)Semantic similarityLatent semantic analysisSemantic data modelArtificial intelligenceScale (ratio)Natural language processingEntity linkingWorld Wide WebSemantic computingIdentity (music)Semantic integrationSemantic WebInterface (matter)Knowledge graphDistributional semanticsSemantic heterogeneityVolunteered geographic informationTopic modelData sciencePoint (geometry)RDFProbabilistic latent semantic analysisAdvanced Graph Neural NetworksSemantic Web and OntologiesTopic Modeling