Rich and diverse information sources of static or stream structured data do exist. However these are heterogeneous in various aspects: On the ways information is formed, on the ways information is described and shaped, on the ways different aspects of (abstract or concrete) entities are conceptualized and represented.
Computing accurate semantic descriptions of heterogeneous and disparate data sources, and managing their heterogeneity via scalable semantic alignment solutions is challenge. We need algorithms that – among others- are able to cope with big data sources, take advantage of background knowledge and consult humans to compute semantic agreements.
In addition to that, considering the existence of many diverse information sources in an open environment; each source having its own way of structuring, describing data and representing the world, we can easily see the necessity of distributed algorithms for these sources to reach semantic agreements towards shaping information jointly.
Specific Topics
- Ontology alignment methods
- Ontology-based data integration from heterogeneous and disparate data sources
Recent Publications
2020 |
Karampelas, Andreas; Vouros, George A Time and Space Efficient Large Scale Link Discovery using String Similarities Journal Article Fundamenta Informaticae, 172 , pp. 299-325, 2020, ISSN: 0169-2968 (P). @article{351, title = {Time and Space Efficient Large Scale Link Discovery using String Similarities}, author = {Andreas Karampelas and George A Vouros}, url = {https://content.iospress.com/articles/fundamenta-informaticae/fi1906?resultNumber=0&totalResults=158&start=0&q=Time+and+Space+Efficient&resultsPageSize=10&rows=10}, doi = {10.3233/FI-2020-1906}, issn = {0169-2968 (P)}, year = {2020}, date = {2020-02-01}, journal = {Fundamenta Informaticae}, volume = {172}, pages = {299-325}, keywords = {}, pubstate = {published}, tppubtype = {article} } |
2019 |
Petrou, P; et al., ARGO: A Big Data Framework for Online Trajectory Prediction Conference SSTD 2019, 2019. @conference{345, title = {ARGO: A Big Data Framework for Online Trajectory Prediction}, author = {P Petrou and et al.}, year = {2019}, date = {2019-01-01}, booktitle = {SSTD 2019}, keywords = {}, pubstate = {published}, tppubtype = {conference} } |
Doulkeridis, Christos; Qu, Qiang; Vouros, George A; ~a, Jo Guest Editorial: Special issue on mobility analytics for spatio-temporal and social data. Journal Article GEOINFORMATICA, 23 , 2019. @article{353, title = {Guest Editorial: Special issue on mobility analytics for spatio-temporal and social data.}, author = {Christos Doulkeridis and Qiang Qu and George A Vouros and Jo ~a}, url = {https://link.springer.com/article/10.1007%2Fs10707-019-00374-x}, year = {2019}, date = {2019-01-01}, journal = {GEOINFORMATICA}, volume = {23}, chapter = {235}, keywords = {}, pubstate = {published}, tppubtype = {article} } |
Koutroumanis, N; et al., Integration of Mobility Data with Weather Information. Conference EDBT/ICDT Workshops 2019, 2019. @conference{348, title = {Integration of Mobility Data with Weather Information.}, author = {N Koutroumanis and et al.}, year = {2019}, date = {2019-01-01}, booktitle = {EDBT/ICDT Workshops 2019}, keywords = {}, pubstate = {published}, tppubtype = {conference} } |
Santipantakis, G; et al., stLD: towards a spatio-temporal link discovery framework. Conference SBD@SIGMOD 2019, 2019. @conference{347, title = {stLD: towards a spatio-temporal link discovery framework.}, author = {G Santipantakis and et al.}, year = {2019}, date = {2019-01-01}, booktitle = {SBD@SIGMOD 2019}, keywords = {}, pubstate = {published}, tppubtype = {conference} } |