Environmental and more generally geo-spatial information is now provided by crowdsourcing but also by public administrations in the context of the open data policies. Analyses of such data are still challenging. Firstly because of their heterogeneity (structural, semantic, spatial and temporal), and secondly because of the difficulty in choosing the “best” knowledge discovery process to apply, according to the needs of the experts in the field. This special issue aims to provide high quality research covering all or part of the challenges mentioned above, from a theoretical or experimental point of view.
Challenge about data science deals with creation, storage, search, sharing, modeling, analysis, and visualization of data, information, and knowledge. In Data Science context, spatio-temporal aspects are crucial in order to manage and mine data, to index and retrieve information, and finally to discover and visualize knowledge. By taking into account these spatio-temporal aspects, original methods have to be proposed for processing real and complex data from different domains, e.g., environment, agriculture, health, urban, and so forth.
Diana Inkpen
Unversity of Ottawa,
Canada
Mathieu Roche
Cirad, TETIS,
France
Maguelonne Teisseire
Irstea, TETIS,
France
Diana Inkpen – diana@site.uottawa.ca
Mathieu Roche – mroche@cirad.fr
Maguelonne Teisseire – maguelonne.teisseire@irstea.fr
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