SEONT: Semantics & mapping exercise to add structure to messy socio-economic data

This session is the fifth webinar of the series: All about our products and their uses, organised by the Ontologies Community of Practice. During this webinar, Gideon Kruseman and Soohno Kim guide us in the conception, development and content of SEONT, the Socio-Economic Ontology built by the CGIAR and partners to annotate agricultural household surveys. Xingyi Song presents the machine learning tool, based on natural language processing, developed by the University of Sheffield to extract SEONT terms from 100 core socio-economic questions. Finally, Berta Miro closes the webinar by unfolding a story about annotating CGIAR survey data using SEONT and other ontologies via the machine learning tool developed by the University of Sheffield.

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Detalles Bibliográficos
Formato: Video biblioteca
Idioma:English
Publicado: CGIAR Platform for Big Data in Agriculture 2020
Materias:AGRICULTURAL SCIENCES AND BIOTECHNOLOGY, Webinar, Socioeconomic Data, Standardization, Big Data, ONTOLOGY, MACHINE LEARNING, DATA, AGRICULTURAL RESEARCH, DATA ANALYSIS, STANDARDIZING, SURVEYS,
Acceso en línea:https://hdl.handle.net/10883/21256
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