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Bei diesem Dokument handelt es sich um die Annotationsguideline "Wissensvermittlungen im Drama annotieren" aus dem Projekt Q:TRACK, gefördert im DFG-Schwerpunktprogramm "Computational Literary Studies". DFG Schwerpunktprogramm SPP 2207 "Computational Literary Studies" Online: https://gepris.dfg.de/gepris/projekt/402743989 https://dfg-spp-cls.github.io/ Teilprojekt: "Quantitative Drama Analytics: Tracking Character Knowledge (Q:TRACK)" Online: https://gepris.dfg.de/gepris/projekt/424244162 https://dfg-spp-cls.github.io/projects_en/de/2020/01/24/TP-QTrack/ https://quadrama.github.io/
{"references": ["Melanie Andresen, Benjamin Krautter, Janis Pagel, Nils Reiter. Who Knows What in German Drama? A Composite Annotation Scheme for Knowledge Transfer. Annotation, Evaluation, and Analysis. Journal of Computational Literary Studies, 1, 2022. DOI: 10.48694/jcls.107."]}
computational literary studies, drama, SPP 2207
computational literary studies, drama, SPP 2207
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