卷积神经网络声学模型的特征跨语言可转移性如何?

J. Thompson, M. Schönwiesner, Yoshua Bengio, D. Willett
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引用次数: 13

摘要

在深度网络的中间层中学习表征可以提供对任务性质的有价值的见解,并可以指导量身定制的学习策略的发展。本文研究了基于卷积神经网络(CNN)的声学模型在自动语音识别中的应用。采用[1]提出的方法,我们测量了英语、荷兰语和德语之间每一层的可转移性,以评估它们的语言特异性。我们观察到三个不同的可转移性区域:(1)前两层在语言之间完全可转移;(2)第2 - 8层也具有高度可转移性,但我们发现了一些语言特异性的证据;(3)随后的完全连接层更具有语言特异性,但可以成功地微调到目标语言。为了进一步探讨体重冻结的影响,我们使用冷冻训练进行了后续实验[2]。我们的结果与cnn在训练过程中“自下而上”收敛的观察结果一致,并证明了冻结训练的好处,特别是对于迁移学习。
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How Transferable Are Features in Convolutional Neural Network Acoustic Models across Languages?
Characterization of the representations learned in intermediate layers of deep networks can provide valuable insight into the nature of a task and can guide the development of well-tailored learning strategies. Here we study convolutional neural network (CNN)-based acoustic models in the context of automatic speech recognition. Adapting a method proposed by [1], we measure the transferability of each layer between English, Dutch and German to assess their language-specificity. We observed three distinct regions of transferability: (1) the first two layers were entirely transferable between languages, (2) layers 2–8 were also highly transferable but we found some evidence of language specificity, (3) the subsequent fully connected layers were more language specific but could be successfully finetuned to the target language. To further probe the effect of weight freezing, we performed follow-up experiments using freeze-training [2]. Our results are consistent with the observation that CNNs converge ‘bottom up’ during training and demonstrate the benefit of freeze training, especially for transfer learning.
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