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arXiv:2107.02858 [cs.CL]AbstractReferencesReviewsResources

Topic Modeling in the Voynich Manuscript

Rachel Sterneck, Annie Polish, Claire Bowern

Published 2021-07-06Version 1

This article presents the results of investigations using topic modeling of the Voynich Manuscript (Beinecke MS408). Topic modeling is a set of computational methods which are used to identify clusters of subjects within text. We use latent dirichlet allocation, latent semantic analysis, and nonnegative matrix factorization to cluster Voynich pages into `topics'. We then compare the topics derived from the computational models to clusters derived from the Voynich illustrations and from paleographic analysis. We find that computationally derived clusters match closely to a conjunction of scribe and subject matter (as per the illustrations), providing further evidence that the Voynich Manuscript contains meaningful text.

Comments: See https://lingbuzz.net/lingbuzz/006068 for a version that has the Voynich font (and better figure placement), since arxiv does not allow xelatex compilation
Categories: cs.CL
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