Knowledge Extraction for Art History: the Case of Vasari’s The Lives of The Artists (1568)

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Date

Volume

3234

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Journal

CEUR workshop proceedings

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Book Title

Qurator 2022, Third Conference on Digital Curation Technologies : proceedings of the Third Conference on Digital Curation Technologies (Qurator 2022)

Publisher

Aachen, Germany : RWTH Aachen

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Abstract

Knowledge Extraction (KE) techniques are used to convert unstructured information present in texts to Knowledge Graphs (KGs) which can be queried and explored. Despite their potential for cultural heritage domains, such as Art History, these techniques often encounter limitations if applied to domain-specific data. In this paper we present the main challenges that KE has to face on art-historical texts, by using as case study Giorgio Vasari's The Lives of The Artists. This paper discusses the following NLP tasks for art-historical texts, namely entity recognition and linking, coreference resolution, time extraction, motif extraction and artwork extraction. Several strategies to annotate art-historical data for these tasks and evaluate NLP models are also proposed.

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CC BY 4.0 Unported