Incremental learning for RNN-Transducer based speech recognition models

Deepak Baby, Pasquale D’Alterio, Valentin Mendelev
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引用次数: 5

Abstract

This paper investigates an incremental learning framework for a real-world voice assistant employing RNN-Transducer based automatic speech recognition (ASR) model. Such a model needs to be regularly updated to keep up with changing distribution of customer requests. We demonstrate that a simple fine-tuning approach with a combination of old and new training data can be used to incrementally update the model spending only several hours of training time and without any degradation on old data. This paper explores multiple rounds of incremental updates on the ASR model with monthly training data. Results show that the proposed approach achieves 5-6% relative WER improvement over the models trained from scratch on the monthly evaluation datasets. In addition, we explore if it is pos-sible to improve recognition of specific new words. We simulate multiple rounds of incremental updates with handful of training utterances per word (both real and synthetic) and show that the recognition of the new words improves dramatically but with a minor degradation on general data. Finally, we demonstrate that the observed degradation on general data can be mitigated by interleaving monthly updates with updates targeting specific words.
基于RNN传感器的语音识别模型的增量学习
本文研究了一种基于RNN-Transducer自动语音识别(ASR)模型的语音助手增量学习框架。这样的模型需要定期更新,以跟上客户请求分布的变化。我们证明了一种简单的微调方法,结合旧的和新的训练数据,可以用来增量地更新模型,只需要几个小时的训练时间,并且对旧数据没有任何退化。本文探讨了基于月度训练数据的ASR模型的多轮增量更新。结果表明,与在月度评估数据集上从零开始训练的模型相比,该方法的相对WER提高了5-6%。此外,我们还探讨了是否有可能提高对特定生词的识别。我们用每个单词的少量训练话语(真实的和合成的)模拟了多轮增量更新,并表明对新单词的识别显着提高,但对一般数据有轻微的下降。最后,我们证明了在一般数据上观察到的退化可以通过将每月更新与针对特定单词的更新交叉使用来缓解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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