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Bio
Dr David Corsar is a lecturer in the School of Computing Science and Digital Media (Robert Gordon University). His research interests focus on advancing the semantic web for knowledge representation and reasoning in intelligent systems that utilize heterogeneous data sources, such as open data, data from citizens, the Internet of Things, and social media. He received his Ph.D. (2009, University of Aberdeen) in the area of knowledge reuse, through a novel combination of ontology mapping and ontology based knowledge acquisition. He subsequently explored his research interests working in interdisciplinary teams, describing application domains through the development of new ontologies, investigating the role of provenance within intelligent systems, and developing reasoning processes to increase system transparency and support assessments of information quality and trust. He is also interested in evaluating semantic technologies in real world applications, which he has explored in the public transport and the Internet of Things domains. As a member of the W3C Provenance Working Group, he was involved with developing a standard ontology for the interchange of provenance information on the Web, which has been extended to capture provenance of sensors, sensor data, and Internet of Things deployments.
Research Interests
Papers共 87 篇Author StatisticsCo-AuthorSimilar Experts
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CoRR (2024)
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Zenodo (CERN European Organization for Nuclear Research) (2023)
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ICCBRpp.169-184, (2023)
CoRR (2023)
ARTIFICIAL INTELLIGENCE XL, AI 2023 (2023): 33-46
IUI '23 Companion: Companion Proceedings of the 28th International Conference on Intelligent User Interfacespp.79-82, (2023)
ICCBRpp.279-293, (2023)
arxiv(2022)
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