Data collection by the people, for the people
Christine Robson, Sean Kandel, et al.
CHI 2011
In this paper, we describe scalable highly expressive reasoner (SHER), a breakthrough technology that provides semantic querying of large relational datasets using OWL ontologies. SHER relies on a unique algorithm based on ontology summarization and combines a traditional in-memory description logic reasoner with a database backed RDF Store to scale reasoning to very large Aboxes. In our latest experiments, SHER is able to do sound and complete conjunctive query answering up to 7 million triples in seconds, and scales to datasets with 60 million triples, responding to queries in minutes. We describe the SHER system architecture, discuss the underlying components and their functionality, and briefly highlight two concrete use-cases of scalable OWL reasoning based on SHER in the Health Care and Life Science space. The SHER system, with the source code, is available for download (free for academic use) at: http://www.alphaworks.ibm.com/tech/sher. © 2009 Elsevier B.V. All rights reserved.
Christine Robson, Sean Kandel, et al.
CHI 2011
Michael Desmond, Michelle Brachman, et al.
AAAI 2022
Oznur Alkan, Massimilliano Mattetti, et al.
INFORMS 2020
Robert Moore, Eric Young Liu, et al.
CUI 2020