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arxiv: 2012.00876 · v1 · pith:AP7B7CIR · submitted 2020-12-01 · cs.CL · eess.AS

Automatically Identifying Language Family from Acoustic Examples in Low Resource Scenarios

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classification cs.CL eess.AS
keywords languageclassicalfamilylanguagesacousticanalyzeapproachapproaches
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Existing multilingual speech NLP works focus on a relatively small subset of languages, and thus current linguistic understanding of languages predominantly stems from classical approaches. In this work, we propose a method to analyze language similarity using deep learning. Namely, we train a model on the Wilderness dataset and investigate how its latent space compares with classical language family findings. Our approach provides a new direction for cross-lingual data augmentation in any speech-based NLP task.

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