PROCESSING RDF QUERIES ON LINKED STREAM DATA
Abstract
Abstract: Semantic Web has become a very important part of the new Web generation. Besides government data, Internet users are also publishing their data by sharing personal data on the Web. This data grow with other data of stream life provided by sensors, RFID tags. Stream data items are considered as events. Event processing is related to the time of events and can‑not be combined with background knowledge. With Semantic Web technologies, data can be handled and enriched semantically. Different SPARQL enhancements have been developed in order to query continuous RDF streams. Basically, they all extend SPARQL by sliding win‑dows for RDF stream processing. In this paper, we present an overview on processing linked data stream by SPARQL extensions and compare, evaluate some SPARQL extension method on RDF stream data.
Keywords: Linked data, Stream data, RDF, SPARQL, Semantic Web, ontology, query.
References
Anicic, D., Fodor, P., Rudolph, S., Stojanovic, N.: Ep‑sparql: A unified language for event
processing and stream reasoning. In: Proceedings of the 20th International Conference on World
Wide Web. pp. 635–644. ACM (2011)
Davide Francesco Barbieri, Daniele Braga, Stefano Ceri, Emmanuele Della Valle, and Michael
Grossniklaus: Stream Reasoning: Where We Got So Far. Proceedings of NeFoRS 2010, 3rd Inter‑
national Workshop on New Forms of Reasoning for the Semantic Web: Scalable and Dynamic,
Heraklion, Greece, May 2010
Darko Anicic, Paul Fodor, Sebastian Rudolph, Nenad Stojanovic: EP‑SPARQL: A Unified
Language for Event Processing and Stream Reasoning . In Sadagopan Srinivasan, Krithi
Ramamritham, Arun Kumar, M. P. Ravindra, Elisa Bertino, Ravi Kumar, eds., Proceedings of the
th International Conference on World Wide Web, WWW 2011, 635‑644, 2011. ACM
Danh Le Phuoc, Minh Dao‑Tran, Josiane Xavier Parreira, Manfred Hauswirth:A Native and
Adaptive Approach for Unified Processing of Linked Streams and Linked Data. International
Semantic Web Conference (1) 2011: 370‑388
Gao, S., Scharrenbach, T., Bernstein, A.: The clock data‑aware eviction approach: Towards
processing linked data streams with limited resources. In: ESWC, pp.6–20. Springer (2014)
Davide Francesco Barbieri, Daniele Braga, Stefano Ceri, Emanuele Della Valle, Michael
Grossniklaus: Querying RDF streams with C‑SPARQL. SIGMOD Record 39(1): 20‑26 (2010)
Calbimonte, Jean‑Paul: RDF Stream Processing: Letʹs React, 3rd International Workshop on
Ordering and Reasoning at ISWC 2014, Riva del Garda, Trentino, Italy, October 20, 2014
M. Balduini, J‑P Calbimonte, O. Corcho, D. DellʹAglio, E. Della Valle, and J.Z. Pan: Stream
Reasoning For Linked Data, http://streamreasoning.org/sr4ld2013
Jean‑Paul Calbimonte, Oscar Corcho: SPARQLStream: Ontology‑ based access to data streams.