The Tool for the Innovation Activity Ontology Creation and Visualization
Conference paper
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Abstract
In this paper the problem of automatic application of the semantic analysis methods to documents on financial and economic topics in order to visualize the semantic environment map of innovation activity is discussed. The tool for the innovation activity ontology creation and visualization based on associative ontology approach is proposed.
Keywords
Ontology Innovation activity Ontology model visualization Corpus of text Associative ontologyNotes
Acknowledgments
This research is supported by the Russian Foundation for Basic Research, project N 16-29-12965\17.
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