Computer-Assisted Processing of Intertextuality in Ancient Languages
Mark Hedges, Anna Jordanous, K. Faith Lawrence, Charlotte Rouech\'e,, Charlotte Tupman

TL;DR
This paper presents a semantic web-based digital approach for publishing and analyzing interconnected gnomologia texts in ancient Greek and Arabic, enabling collaborative annotation and exploration of complex intertextual relationships.
Contribution
It introduces a novel, open-ended model for digital editions of interconnected texts using semantic web techniques, enhancing scholarly collaboration and analysis.
Findings
Developed a semantic web ecosystem for gnomologia texts
Enabled collaborative annotations and exploration of intertextual links
Applied approach to Greek and Arabic collections
Abstract
The production of digital critical editions of texts using TEI is now a widely-adopted procedure within digital humanities. The work described in this paper extends this approach to the publication of gnomologia (anthologies of wise sayings), which formed a widespread literary genre in many cultures of the medieval Mediterranean. These texts are challenging because they were rarely copied straightforwardly; rather, sayings were selected, reorganised, modified or re-attributed between manuscripts, resulting in a highly interconnected corpus for which a standard approach to digital publication is insufficient. Focusing on Greek and Arabic collections, we address this challenge using semantic web techniques to create an ecosystem of texts, relationships and annotations, and consider a new model - organic, collaborative, interconnected, and open-ended - of what constitutes an edition. This…
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Taxonomy
TopicsDigital Humanities and Scholarship · Authorship Attribution and Profiling · Biomedical Text Mining and Ontologies
