Learning from the Best: A Teacher-student Multilingual Framework for Low-resource Languages

Deblin Bagchi, William Hartmann
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引用次数: 4

Abstract

The traditional method of pretraining neural acoustic models in low-resource languages consists of initializing the acoustic model parameters with a large, annotated multilingual corpus and can be a drain on time and resources. In an attempt to reuse TDNN-LSTMs already pre-trained using multilingual training, we have applied Teacher-Student (TS) learning as a method of pretraining to transfer knowledge from a multilingual TDNN-LSTM to a TDNN. The pretraining time is reduced by an order of magnitude with the use of language-specific data during the teacher-student training. Additionally, the TS architecture allows us to leverage untranscribed data, previously untouched during supervised training. The best student TDNN achieves a WER within 1% of the teacher TDNN-LSTM performance and shows consistent improvement in recognition over TDNNs trained using the traditional pipeline over all the evaluation languages. Switching to TDNN from TDNN-LSTM also allows sub-real time decoding.
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向最好的学习:低资源语言的师生多语言框架
传统的低资源语言神经声学模型预训练方法包括使用大型、带注释的多语言语料库初始化声学模型参数,这可能会消耗大量时间和资源。为了重用已经使用多语言训练进行预训练的TDNN- lstm,我们应用师生(TS)学习作为一种预训练方法,将知识从多语言TDNN- lstm转移到TDNN。在师生训练过程中,使用特定语言的数据,预训练时间减少了一个数量级。此外,TS架构允许我们利用未转录的数据,以前在监督训练期间未触及。最好的学生TDNN达到了教师TDNN- lstm性能的1%以内的WER,并且在所有评估语言中使用传统管道训练的TDNN在识别方面表现出一致的改进。从TDNN- lstm切换到TDNN也允许亚实时解码。
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