Feb. 1, 2024, 12:41 p.m. | Ankita Pasad Chung-Ming Chien Shane Settle Karen Livescu

cs.CL updates on arXiv.org arxiv.org

Many self-supervised speech models (S3Ms) have been introduced over the last few years, improving performance and data efficiency on various speech tasks. However, these empirical successes alone do not give a complete picture of what is learned during pre-training. Recent work has begun analyzing how S3Ms encode certain properties, such as phonetic and speaker information, but we still lack a proper understanding of knowledge encoded at the word level and beyond. In this work, we use lightweight analysis methods to …

begun cs.cl cs.lg data eess.as efficiency encode performance pre-training speech tasks training words work

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