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DiaHClust : an iterative hierarchical clustering approach for identifying stages in language change

Book Contribution - Book Chapter Conference Contribution

Language change is often assessed against a set of pre-determined time periods in order to be able to trace its diachronic trajectory. This is problematic, since a pre-determined periodization might obscure significant developments and lead to false assumptions about the data. Moreover, these time periods can be based on factors which are either arbitrary or non-linguistic, e.g., dividing the corpus data into equidistant stages or taking into account language-external events. Addressing this problem, in this paper we present a data-driven approach to periodization: ‘DiaHClust’. DiaHClust is based on iterative hierarchical clustering and offers a multi-layered perspective on change from text-level to broader time periods. We demonstrate the usefulness of DiaHClust via a case study investigating syntactic change in Icelandic, modelling the syntactic system of the language in terms of vectors of syntactic change.
Book: Proceedings of the 1st International Workshop on Computational Approaches to Historical Language Change
Pages: 126 - 135
ISBN:9781950737314
Publication year:2019
Accessibility:Open