Guided Contrastive Self-Supervised Pre-Training for Automatic Speech Recognition

Aparna Khare, Minhua Wu, Saurabhchand Bhati, J. Droppo, R. Maas
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Abstract

Contrastive Predictive Coding (CPC) is a representation learning method that maximizes the mutual information between intermediate latent representations and the output of a given model. It can be used to effectively initialize the encoder of an Automatic Speech Recognition (ASR) model. We present a novel modification of CPC called Guided Contrastive Predictive Coding (GCPC). Our proposed method maximizes the mutual information between representations from a prior-knowledge model and the output of the model being pre-trained, allowing prior knowledge injection during pre-training. We validate our method on 3 ASR tasks: German, French and English. Our method outperforms CPC pre-training on all three datasets, reducing the Word Error Rate (WER) by 4.44%, 6.55% and 15.43% relative on the German, French and English (Librispeech) tasks respectively, compared to training from scratch, while CPC pre-training only brings 2.96%, 1.01% and 14.39% relative WER reduction respectively.
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自动语音识别的引导对比自监督预训练
对比预测编码(CPC)是一种表征学习方法,可以最大限度地利用中间潜在表征与给定模型输出之间的互信息。它可以用来有效地初始化自动语音识别(ASR)模型的编码器。本文提出了一种新型的导向对比预测编码(GCPC)。我们提出的方法最大化了先验知识模型表示与预训练模型输出之间的互信息,允许在预训练过程中注入先验知识。我们在3个ASR任务上验证了我们的方法:德语,法语和英语。我们的方法在所有三个数据集上都优于CPC预训练,与从头开始训练相比,在德语、法语和英语(librisspeech)任务上,CPC预训练的相对错误率(WER)分别降低了4.44%、6.55%和15.43%,而CPC预训练的相对错误率分别仅降低了2.96%、1.01%和14.39%。
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