Detailed Information on Publication Record
2023
Historical Texts into Structured Knowledge Graphs : Introducing Computer-Assisted Semantic Text Modelling in InkVisitor
ZBÍRAL, David, Robert Laurence John SHAW, Tomáš HAMPEJS and Adam MERTELBasic information
Original name
Historical Texts into Structured Knowledge Graphs : Introducing Computer-Assisted Semantic Text Modelling in InkVisitor
Name (in English)
Historical Texts into Structured Knowledge Graphs : Introducing Computer-Assisted Semantic Text Modelling in InkVisitor
Authors
Edition
Social Networks in Medieval and Renaissance Studies: Thirty Years after Robust Action, Vienna, 21-23 June 2023, 2023
Other information
Type of outcome
Prezentace na konferencích
Confidentiality degree
není předmětem státního či obchodního tajemství
Keywords (in Czech)
sémantické modelování textu; digital humanities; náboženský disent
Keywords in English
semantic text modelling; digital humanities; inquisition; religious dissidence
Tags
International impact, Reviewed
Změněno: 15/12/2023 10:09, Mgr. Jolana Navrátilová
V originále
The paper outlines the methods employed in the DISSINET project for generating structured knowledge graphs from historical data, shedding light on the challenges faced by historians and researchers. The authors introduce Computer-Assisted Semantic Text Modelling (a human-controlled, computer-assisted, statement-based approach to data collection from texts) that seamlessly integrates close reading with computational modeling and transforms texts into rich syntactic-semantic data. The web-based open-source InkVisitor application, which enables creating and linking entities, supports furhter comprehensive analysis. Using the Bologna and Niort trials as illustrative examples, the authors showcase how this approach unveils and elucidates social, spatial, and discursive patterns within medieval dissidence, inquisition trials, and related records. Additionally, the paper delves into the future prospects of machine-produced CASTEMO, leveraging manually collected data as training data for enhanced outcomes.
In English
The paper outlines the methods employed in the DISSINET project for generating structured knowledge graphs from historical data, shedding light on the challenges faced by historians and researchers. The authors introduce Computer-Assisted Semantic Text Modelling (a human-controlled, computer-assisted, statement-based approach to data collection from texts) that seamlessly integrates close reading with computational modeling and transforms texts into rich syntactic-semantic data. The web-based open-source InkVisitor application, which enables creating and linking entities, supports furhter comprehensive analysis. Using the Bologna and Niort trials as illustrative examples, the authors showcase how this approach unveils and elucidates social, spatial, and discursive patterns within medieval dissidence, inquisition trials, and related records. Additionally, the paper delves into the future prospects of machine-produced CASTEMO, leveraging manually collected data as training data for enhanced outcomes.
Links
101000442, interní kód MU |
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