Automated Cognate Detection as a Supervised Link Prediction Task with Cognate Transformer

V.S.D.S.Mahesh Akavarapu, Arnab Bhattacharya

Main: Linguistic Theory and Insights Oral Paper

Session 4: Linguistic Theory and Insights (Oral)
Conference Room: Marie Louise 1
Conference Time: March 18, 16:00-17:30 (CET) (Europe/Malta)
TLDR:
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Abstract: Identification of cognates across related languages is one of the primary problems in historical linguistics. Automated cognate identification is helpful for several downstream tasks including identifying sound correspondences, proto-language reconstruction, phylogenetic classification, etc. Previous state-of-the-art methods are mostly based on distributions of phonemes computed across multilingual wordlists and make little use of the cognacy labels that define links among cognate clusters. In this paper, we present a transformer-based architecture inspired by computational biology for the task of automated cognate detection. Beyond a certain amount of supervision, this method performs better than the existing methods, and shows steady improvement with further increase in supervision proving the efficacy of utilizing the labeled information. We also demonstrate that accepting multiple sequence alignments as input and having an end-to-end architecture with link prediction head saves much computation time while simultaneously yielding superior performance.