Institutions | About Us | Help | Gaeilge
rian logo


Mark
Go Back
Leveraging Domain Expertise to Support Complex, Personalized and Semantically Meaningful Queries Across Separate Data Sources
HAMPSON, CORMAC; CONLAN, OWEN
Abstract?Almost all information domains have witnessed an exponential increase in the amount of structured data available. However, there is still a lack of support for ordinary users to create complex queries spanning multiple information sources. Until this occurs the real benefits of having such a proliferation of metadata will not be realized by the general public. This paper describes SARA (Semantic Attribute Reconciliation Architecture), which is a framework that helps users leverage expert knowledge to discover relevant information, and to draw correlations across separate information sources. These sources can be in various data formats, and are accessed by users in a consolidated fashion. Users are supported in their information exploration with the knowledge of experts, which they can further tailor to better suit their needs. SARA offers tools and support for domain experts with no computing experience to encode their expertise, thus opening up SARA?s use to almost any domain where rich metadata is available. This paper discusses the SARA framework in detail, as well as describing the applications to which it has been successfully applied in a number of different domains.
Keyword(s): Semantic Attributes; Domain Experts; Complex Queries; Data Exploration
Publication Date:
2010
Type: Conference item
Peer-Reviewed: Yes
Language(s): English
Institution: Trinity College Dublin
Funder(s): Irish Research Council for Science Engineering and Technology
Citation(s): Cormac Hampson, Owen Conlan, Leveraging Domain Expertise to Support Complex, Personalized and Semantically Meaningful Queries Across Separate Data Sources, The IEEE Fourth International Conference on Semantic Computing, Pittsburgh, PA, USA, September 22 - 24, IEEE, 2010, 305 - 308
Publisher(s): IEEE
Alternative Title(s): The IEEE Fourth International Conference on Semantic Computing
First Indexed: 2014-05-13 05:22:18 Last Updated: 2015-03-23 11:37:10