Historical Named-Entity Recognition
Historical named-entity recognition adapts a core natural-language-processing task, identifying and classifying the names of persons, places, organizations, and dates in text, to the distinctive difficulties of historical sources. Modern NER systems are trained on clean contemporary text, but historical documents arrive full of archaic and inconsistent spelling, obsolete place-names, OCR or handwriting-transcription errors, and entities that have since changed names or vanished. Work surveyed by Seaward and colleagues addresses these obstacles, combining machine-learning sequence models with historical gazetteers and authority files to recognize entities reliably in noisy diachronic text. The payoff is large: once persons, places, and dates are extracted and linked to standard identifiers, historians can build prosopographies of who appears with whom, populate historical GIS with mapped place-names, and structure vast textual archives for search and analysis. Historical NER thus serves as a crucial bridge, turning the unstructured output of digitization and text mining into structured, linkable data about the actors and settings of the past.
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출처
- Muehlberger, G., Seaward, L., Terras, M., et al. (2019). Transforming scholarship in the archives through handwritten text recognition: Transkribus as a case study. Journal of Documentation, 75(5), 954-976. DOI: 10.1108/JD-07-2018-0114 ↗
- Moretti, F. (2013). Distant Reading. Verso. ISBN: 9781781680841
이 페이지 인용 방법
ScholarGate. (2026, June 23). Named-Entity Recognition for Historical Texts. ScholarGate. https://scholargate.app/ko/digital-history/historical-named-entity-recognition
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- Handwritten Text Recognition for ArchivesDigital History↔ 비교
- Historical Corpus Text MiningDigital History↔ 비교
- Historical GISHistorical Geography↔ 비교