Identifying Cognate Sets Across Dictionaries of Related Languages

EMNLP 2017  ·  Adam St Arnaud, David Beck, Grzegorz Kondrak ·

We present a system for identifying cognate sets across dictionaries of related languages. The likelihood of a cognate relationship is calculated on the basis of a rich set of features that capture both phonetic and semantic similarity, as well as the presence of regular sound correspondences. The similarity scores are used to cluster words from different languages that may originate from a common proto-word. When tested on the Algonquian language family, our system detects 63{\%} of cognate sets while maintaining cluster purity of 70{\%}.

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