Master-ASR: Achieving Multilingual Scalability and Low-Resource Adaptation in ASR with Modular Learning

Zhongzhi Yu, Yang Zhang, Kaizhi Qian, Y. Fu, Y. Lin
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Abstract

Despite the impressive performance recently achieved by automatic speech recognition (ASR), we observe two primary challenges that hinder its broader applications: (1) The difficulty of introducing scalability into the model to support more languages with limited training, inference, and storage overhead; (2) The low-resource adaptation ability that enables effective low-resource adaptation while avoiding over-fitting and catastrophic forgetting issues. Inspired by recent findings, we hypothesize that we can address the above challenges with modules widely shared across languages. To this end, we propose an ASR framework, dubbed \METHODNS, that, \textit{for the first time}, simultaneously achieves strong multilingual scalability and low-resource adaptation ability thanks to its modularize-then-assemble strategy. Specifically, \METHOD learns a small set of generalizable sub-modules and adaptively assembles them for different languages to reduce the multilingual overhead and enable effective knowledge transfer for low-resource adaptation. Extensive experiments and visualizations demonstrate that \METHOD can effectively discover language similarity and improve multilingual and low-resource ASR performance over state-of-the-art (SOTA) methods, e.g., under multilingual-ASR, our framework achieves a 0.13$\sim$2.41 lower character error rate (CER) with 30\% smaller inference overhead over SOTA solutions on multilingual ASR and a comparable CER, with nearly 50 times fewer trainable parameters over SOTA solutions on low-resource tuning, respectively.
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掌握ASR:用模块化学习实现ASR的多语言可扩展性和低资源适应
尽管自动语音识别(ASR)最近取得了令人印象深刻的性能,但我们观察到阻碍其更广泛应用的两个主要挑战:(1)在有限的训练、推理和存储开销的情况下,难以将可扩展性引入模型以支持更多语言;(2)低资源适应能力,在避免过度拟合和灾难性遗忘问题的同时,实现有效的低资源适应。受最近发现的启发,我们假设可以使用跨语言广泛共享的模块来解决上述挑战。为此,我们提出了一个名为\METHODNS的ASR框架,该框架\textit{首次}实现了强大的多语言可扩展性和低资源适应能力,这得益于其模块化后组装策略。具体而言,\METHOD学习了一组可泛化的子模块,并针对不同的语言自适应地组装它们,以减少多语言开销,并为低资源适应实现有效的知识转移。大量的实验和可视化表明,\METHOD可以有效地发现语言相似性,并比最先进的(SOTA)方法提高多语言和低资源的ASR性能,例如,在多语言ASR下,我们的框架实现了0.13 $\sim$ 2.41低字符错误率(CER),比SOTA解决方案在多语言ASR和类似的CER上减少了30%的推理开销。在低资源调优方面,它们的可训练参数分别比SOTA解决方案少近50倍。
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