ABSTRACT
Information searching techniques are rapidly developing as the World Wide Web (WWW) evolves. Along with the development of information technologies, the need for acquiring domain knowledge bases, accessing data sources and discovering insights increases. The advancements in knowledge discovery, information management and artificial intelligence require faster data processing, storing more data and developing more intelligent applications. This study provides an information discovery and data integration approach for linked open data in the semantic web. Using semantics embedded in ontologies, data available in knowledge bases can be enhanced to better serve the information needs of users. The entity relationships between resources and resource hierarchies represented as linked open data in semantic web provide semantically rich insights about the data and facilitates knowledge discovery. Graph theory methods can be utilized to enrich the features of data sets in semantic web. In this study, we propose an approach for integrating isolated data sources with semantic web by using ontologies to make them available for information discovery and enhancing the features of semantic data by using graph theory techniques.
- T. Berners-Lee, J. Hendler, and O. Lassila, The Semantic Web, vol. 284, no. 5. 2001.Google Scholar
- P. N. Gupta, P. Singh, P. P. Singh, P. K. Singh, and D. Sinha, "A Novel Architecture of Ontology based Semantic Search Engine," Int. J. Sci. Technol., vol. 1, no. 12, pp. 650--654, 2012.Google Scholar
- S. Kumar, R. a M. K. Rana, and P. Singh, "A Semantic Query Transformation Approach Based on Ontology for Search Engine," vol. 4, no. 5, pp. 688--693, 2012.Google Scholar
- S. Yumusak, E. Dogdu, and H. Kodaz, "A short survey of linked data ranking," in Proceedings of the 2014 ACM Southeast Regional Conference on - ACM SE '14, 2014, pp. 1--4. Google ScholarDigital Library
- "Linked Data - Design Issues." {Online}. Available: https://www.w3.org/DesignIssues/LinkedData.html. {Accessed: 01-Feb-2018}.Google Scholar
- A. Ruttenberg, J. A. Rees, M. Samwald, and M. S. Marshall, "Life sciences on the Semantic Web: the Neurocommons and beyond," Brief. Bioinform., vol. 10, no. 2, pp. 193--204, Mar. 2009.Google ScholarCross Ref
- M. Samwald et al., "Linked open drug data for pharmaceutical research and development," J. Cheminform., vol. 3, no. 1, p. 19, May 2011.Google ScholarCross Ref
- B. Chen et al., "Chem2Bio2RDF: a semantic framework for linking and data mining chemogenomic and systems chemical biology data," BMC Bioinformatics, vol. 11, no. 1, p. 255, May 2010.Google ScholarCross Ref
- A. Callahan, J. Cruz-Toledo, and M. Dumontier, "Ontology-Based Querying with Bio2RDF's Linked Open Data."Google Scholar
- "Semantic Web tutorial - Comparing document formats - slide "Directed Labeled Graph"" {Online}. Available: https://www.w3.org/2003/Talks/0520-www-tf1-a2-formats/slide6-0.html. {Accessed: 12-Jan-2018}.Google Scholar
- G. Antoniou, F. Van Harmelen, and S. Edition, "A Semantic Web Primer." Google ScholarDigital Library
- A. Reggiori, D. Van Gulik, and Z. Bjelogrlic, "Indexing and retrieving Semantic Web resources: the RDFStore model," Image (Rochester, N.Y.), pp. 1--13, 2010.Google Scholar
- I. Robinson, J. Webber, and E. Eifrem, Graph Databases. Google ScholarDigital Library
- C. C. Aggarwal and H. Wang, "MANAGING AND MINING GRAPH DATA." Google ScholarDigital Library
- Z. Lin, M. R. Lyu, and I. King, "MatchSim: A novel similarity measure based on maximum neighborhood matching," Knowl. Inf. Syst., vol. 32, no. 1, pp. 141--166, 2012. Google ScholarDigital Library
- R. Angles and C. Gutierrez, "Querying RDF Data from a Graph Database Perspective."Google Scholar
- E. Prud and A. Seaborne, "Sparql query language for rdf," W3C Recomm. http//www. w3. org/TR/rdf-sparql-query, no. January 2008, pp. 1--82, 2006.Google Scholar
- L. Zou, M. T. Özsu, L. Chen, X. Shen, R. Huang, and D. Zhao, "gStore: A graph-based SPARQL query engine," VLDB J., vol. 23, no. 4, pp. 565--590, 2014. Google ScholarDigital Library
- "JSON." {Online}. Available: https://www.json.org/. {Accessed: 12-Jan-2018}.Google Scholar
- "The Neo4j Graph Platform - The #1 Platform for Connected Data." {Online}. Available: https://neo4j.com/. {Accessed: 12-Jan-2018}.Google Scholar
- Apache Software Foundation, "Apache Jena - Home," 2015. {Online}. Available: https://jena.apache.org/. {Accessed: 12-Jan-2018}.Google Scholar
- OpenLink Software, "OpenLink Virtuoso," 2012. {Online}. Available: http://virtuoso.openlinksw.com/. {Accessed: 12-Jan-2018}.Google Scholar
- "NetworkX - NetworkX." {Online}. Available: https://networkx.github.io/. {Accessed: 06-Jan-2018}.Google Scholar
- S. Ayvaz et al., "Toward a complete dataset of drug-drug interaction information from publicly available sources," J. Biomed. Inform., vol. 55, no. April, pp. 206--217, 2015. Google ScholarDigital Library
Index Terms
- An Approach for Information Discovery Using Ontology In Semantic Web Content
Recommendations
Enhancing semantic search using case-based modular ontology
SAC '10: Proceedings of the 2010 ACM Symposium on Applied ComputingIn this paper, we present a semantic search approach based on Case-based modular Ontology. Our work aims to improve ontology-based information retrieval by the integration of the traditional information retrieval, the use of ontology and the case based ...
Ontology usage analysis in the ontology lifecycle
The Semantic Web envisions a Web where information is accessible and processable by computers as well as humans. Ontologies are the cornerstones for realizing this vision of the Semantic Web by capturing domain knowledge through the defined terms and ...
Semantic search using modular ontology learning and case-based reasoning
EDBT '10: Proceedings of the 2010 EDBT/ICDT WorkshopsIn this paper, we present a semantic search approach based on Case-based reasoning and modular Ontology learning. A case is defined by a set of similar queries associated with its relevant results. The case base is used for ontology learning and for ...
Comments