Computational Approaches for Integrating out Subjectivity in Cognate Synonym Selection

Abstract:

Working with cognate data involves handling synonyms, that is, multiple words that describe the same concept in a language. In the early days of language phylogenetics it was recommended to select one synonym only. However, as we show here, binary character matrices, which are used as input for computational methods, do allow for representing the entire dataset including all synonyms. Here we address the question how one can and if one should include all synonyms or whether it is preferable to select synonyms a priori. To this end, we perform maximum likelihood tree inferences with the widely used RAxML-NG tool and show that it yields plausible trees when all synonyms are used as input. Furthermore, we show that a priori synonym selection can yield topologically substantially different trees and we therefore advise against doing so. To represent cognate data including all synonyms, we introduce two types of character matrices beyond the standard binary ones: probabilistic binary and probabilistic multi-valued character matrices. We further show that it is dataset-dependent for which character matrix type the inferred RAxML-NG tree is topologically closest to the gold standard. We also make available a Python interface for generating all of the above character matrix types for cognate data provided in CLDF format.

SEEK ID: https://publications.h-its.org/publications/1906

Filename: 2024.scil-1.16.pdf 

Format: PDF document

Size: 529 KB

SEEK ID: https://publications.h-its.org/publications/1906

Research Groups: Computational Molecular Evolution

Publication type: Proceedings

Editors: Richard Futrell, Connor Mayer, Noga Zaslavsky

Publisher: Association for Computational Linguistics

Citation: Luise Häuser, Gerhard Jäger, and Alexandros Stamatakis. 2024. Computational Approaches for Integrating out Subjectivity in Cognate Synonym Selection. In Proceedings of the Society for Computation in Linguistics 2024, pages 162–172, Irvine, CA. Association for Computational Linguistics.

Date Published: 28th Jun 2024

URL: https://aclanthology.org/2024.scil-1.16/

Registered Mode: manually

Authors: Luise Häuser, Gerhard Jäger, Alexandros Stamatakis

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Created: 9th Jan 2025 at 10:35

Last updated: 9th Jan 2025 at 10:35

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