2013
DOI: 10.1007/978-3-642-41924-9_28
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Baquara: A Holistic Ontological Framework for Movement Analysis Using Linked Data

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Cited by 27 publications
(23 citation statements)
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“…SEEK focuses on researching methods to extract knowledge from large amounts of mobility data. As an example of the contributions of SEEK, the Baquara ontology presented in Fileto, Krüger, Pelekis, Theodoridis, and Renso (2013) provides a conceptual framework for the semantic enrichment of mobility data using annotations based on Linked Data (Bizer, Heath, & Berners-Lee, 2009). …”
Section: Feasibility Analysismentioning
confidence: 99%
“…SEEK focuses on researching methods to extract knowledge from large amounts of mobility data. As an example of the contributions of SEEK, the Baquara ontology presented in Fileto, Krüger, Pelekis, Theodoridis, and Renso (2013) provides a conceptual framework for the semantic enrichment of mobility data using annotations based on Linked Data (Bizer, Heath, & Berners-Lee, 2009). …”
Section: Feasibility Analysismentioning
confidence: 99%
“…The following SPARQL queries complement the geoSPARQL ones presented in [38], by providing examples involving semantic con-491 straints in multiple levels of movement segment hierarchies. Consider that the prefix bq refers to the URI of the Baquara 2 ontology, 14 492 and that LOD from different sources has been pre-processed to consolidate the properties of resources linked by the sameAs property.…”
mentioning
confidence: 98%
“…[57]). It has also been applied to a wide range of topics dealing with the development and implementation of information systems, including the Internet of Things [7], modeling languages [19,36], social network analysis [15,37], semantic understanding [8,34], provenance [49], enterprise modeling [21], biology [47,50], mobile devices [20], cloud computing [2,51], and modeling for user-generated content [38,39].…”
Section: Introductionmentioning
confidence: 99%