From exemplar to copy: the scribal appropriation of a Hadewijch manuscript computationally explored
Wouter Haverals, Mike Kestemont

TL;DR
This study computationally analyzes two medieval manuscripts of Hadewijch's work to identify subtle scribal variations and the influence of one manuscript on the other, revealing insights into scribal practices and copying behavior.
Contribution
It introduces a novel computational methodology to measure scribal variation and appropriation in medieval manuscript copying, expanding prior research with machine learning techniques.
Findings
Identified linguistic differences at word and n-gram levels between the manuscripts.
Demonstrated the influence of the exemplar on the copying manuscript.
Detected diachronic trends in scribal appropriation over time.
Abstract
This study is devoted to two of the oldest known manuscripts in which the oeuvre of the medieval mystical author Hadewijch has been preserved: Brussels, KBR, 2879-2880 (ms. A) and Brussels, KBR, 2877-2878 (ms. B). On the basis of codicological and contextual arguments, it is assumed that the scribe who produced B used A as an exemplar. While the similarities in both layout and content between the two manuscripts are striking, the present article seeks to identify the differences. After all, regardless of the intention to produce a copy that closely follows the exemplar, subtle linguistic variation is apparent. Divergences relate to spelling conventions, but also to the way in which words are abbreviated (and the extent to which abbreviations occur). The present study investigates the spelling profiles of the scribes who produced mss. A and B in a computational way. In the first part of…
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Taxonomy
TopicsNatural Language Processing Techniques · Authorship Attribution and Profiling · Handwritten Text Recognition Techniques
