Adversarial Meta Learning Improves Low-Resource Speech Recognition

Yaqi Chen, Dan Qu, Wenlin Zhang, Fen Yu, Haotong Zhang, Xukui Yang
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Abstract

Low-resource automatic speech recognition is a chal- lenging task. To solve this issue, multilingual meta-learning learns a better model initialization from many source language tasks, allowing for rapid adaption to the target language. However, due to the lack of limitations on multilingual pre-training, the shared semantic space of different languages is difficult to learn. In this work, we propose an adversarial meta-learning training approach to solve this problem. By using the adversarial auxiliary aim of language identification in the meta-learning algorithm, it will guide the model encoder to generate language-independent embedding features, which can improve model generalization. And we use Wasserstein distance and temporal normalization to optimize our adversarial training, making the training more stable and easier. The approach is evaluated on the IARPA BABEL. The results reveal that our approach only requires half as many meta learning training epochs to attain comparable multilingual pre-training performance. It also outperforms the meta learning in all target languages fine-tuning and achieves comparable performance in small data scales. Specially, it can reduce CER from 71% to 62% with fine-tuning 25% of Vietnamese data. Finally, we show why our approach is superior than others by using t-SNE.
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对抗性元学习改进低资源语音识别
低资源自动语音识别是一项具有挑战性的任务。为了解决这个问题,多语言元学习从许多源语言任务中学习更好的模型初始化,从而允许快速适应目标语言。然而,由于多语言预训练缺乏局限性,不同语言之间的共享语义空间难以学习。在这项工作中,我们提出了一种对抗性元学习训练方法来解决这个问题。在元学习算法中利用语言识别的对抗性辅助目标,引导模型编码器生成与语言无关的嵌入特征,提高模型泛化能力。我们使用Wasserstein距离和时间归一化来优化我们的对抗性训练,使训练更加稳定和简单。该方法在IARPA BABEL上进行了评估。结果表明,我们的方法只需要一半的元学习训练时间就可以获得相当的多语言预训练性能。它在所有目标语言的微调中都优于元学习,并且在小数据规模上也达到了相当的性能。特别是,它可以通过微调25%的越南数据将CER从71%降低到62%。最后,我们通过使用t-SNE来说明为什么我们的方法优于其他方法。
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