TheoryOn : a design framework and system for unlocking behavioral knowledge through ontology learning
Year of publication: |
2020
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---|---|
Authors: | Li, Jingjing ; Larsen, Kai R. ; Abbasi, Ahmed |
Published in: |
MIS quarterly. - Minneapolis, Minn : MISRC, ISSN 2162-9730, ZDB-ID 2068190-2. - Vol. 44.2020, 4, p. 1733-1772
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Subject: | Behavioral ontology learning design framework | design science research | text analytics | machine learning | randomized experiment | applicability check | Ontologie | Ontology | Künstliche Intelligenz | Artificial intelligence | Wissensmanagement | Knowledge management | Lernprozess | Learning process | Lernende Organisation | Learning organization | Experiment |
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