Automatic Speech Recognition (ASR) systems typically produce unpunctuated transcripts that have poor readability. In addition, building a punctuation restoration system is challenging for low-resource languages, especially for domain-specific applications. In this paper, we propose a Spanish punctuation restoration system designed for a real-time customer support transcription service. To address the data sparsity of Spanish transcripts in the customer support domain, we introduce two transfer-learning-based strategies: 1) domain adaptation using out-of-domain Spanish text data; 2) cross-lingual transfer learning leveraging in-domain English transcript data. Our experiment results show that these strategies improve the accuracy of the Spanish punctuation restoration system.
Cite
@article{arxiv.2205.13961,
title = {Punctuation Restoration in Spanish Customer Support Transcripts using Transfer Learning},
author = {Xiliang Zhu and Shayna Gardiner and David Rossouw and Tere Roldán and Simon Corston-Oliver},
journal= {arXiv preprint arXiv:2205.13961},
year = {2022}
}