Context tree selection and linguistic rhythm retrieval from written texts
Antonio Galves, Charlotte Galves, Jes\'us E. Garc\'ia, Nancy L., Garcia, Florencia Leonardi

TL;DR
This paper introduces a novel statistical method to distinguish linguistic rhythm differences between Brazilian and European Portuguese texts by selecting optimal variable length Markov chain models, revealing dialect-specific rhythmic patterns.
Contribution
It proposes the smallest maximizer criterion for model selection, providing a new, parameter-free approach that improves dialect differentiation in linguistic rhythm analysis.
Findings
Different context-tree models for each Portuguese dialect.
Models align with linguistic conjectures about rhythmic differences.
The method outperforms standard BIC and order estimation techniques.
Abstract
The starting point of this article is the question "How to retrieve fingerprints of rhythm in written texts?" We address this problem in the case of Brazilian and European Portuguese. These two dialects of Modern Portuguese share the same lexicon and most of the sentences they produce are superficially identical. Yet they are conjectured, on linguistic grounds, to implement different rhythms. We show that this linguistic question can be formulated as a problem of model selection in the class of variable length Markov chains. To carry on this approach, we compare texts from European and Brazilian Portuguese. These texts are previously encoded according to some basic rhythmic features of the sentences which can be automatically retrieved. This is an entirely new approach from the linguistic point of view. Our statistical contribution is the introduction of the smallest maximizer criterion…
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