One crucial challenge of real-world multilingual speech recognition is the long-tailed distribution problem, where some resource-rich languages like English have abundant training data, but a long tail of low-resource languages have varying amounts of limited training data. To overcome the long-tail problem, in this paper, we propose Adapt-and-Adjust (A2), a transformer-based multi-task learning framework for end-to-end multilingual speech recognition. The A2 framework overcomes the long-tail problem via three techniques: (1) exploiting a pretrained multilingual language model (mBERT) to improve the performance of low-resource languages; (2) proposing dual adapters consisting of both language-specific and language-agnostic adaptation with minimal additional parameters; and (3) overcoming the class imbalance, either by imposing class priors in the loss during training or adjusting the logits of the softmax output during inference. Extensive experiments on the CommonVoice corpus show that A2 significantly outperforms conventional approaches.
翻译:现实世界多语种语音识别的一个关键挑战是长期存在的分发问题,因为一些资源丰富的语言,如英语,拥有丰富的培训数据,但大量低资源语言有不同的有限培训数据。为了克服长尾问题,我们在本文件中建议采用适应和适应(A2),一个基于变压器的多任务学习框架,用于终端到终端多语种语音识别。A2框架通过三种技术克服了长尾问题:(1) 利用预先培训的多语种模式(mBERT)来改进低资源语言的性能;(2) 提出由语言专用和语言敏感适应和最低限度额外参数组成的双重调适器;(3) 克服班级不平衡,要么在培训期间规定课前损失,要么在判断过程中调整软负载输出的日志。