Analyzing Distributional Learning of Phonemic Categories in Unsupervised Deep Neural Networks.

Okko Räsänen, Tasha Nagamine, Nima Mesgarani
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Abstract

Infants' speech perception adapts to the phonemic categories of their native language, a process assumed to be driven by the distributional properties of speech. This study investigates whether deep neural networks (DNNs), the current state-of-the-art in distributional feature learning, are capable of learning phoneme-like representations of speech in an unsupervised manner. We trained DNNs with unlabeled and labeled speech and analyzed the activations of each layer with respect to the phones in the input segments. The analyses reveal that the emergence of phonemic invariance in DNNs is dependent on the availability of phonemic labeling of the input during the training. No increased phonemic selectivity of the hidden layers was observed in the purely unsupervised networks despite successful learning of low-dimensional representations for speech. This suggests that additional learning constraints or more sophisticated models are needed to account for the emergence of phone-like categories in distributional learning operating on natural speech.

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无监督深度神经网络中音位分类的分布学习分析。
婴儿的语言感知适应其母语的音位类别,这一过程被认为是由语言的分布特性驱动的。本研究探讨了深度神经网络(dnn)是否能够以无监督的方式学习语音的音素表示。我们用未标记和标记的语音训练dnn,并根据输入段中的电话分析每一层的激活情况。分析表明,dnn中音位不变性的出现取决于训练过程中输入音位标记的可用性。在纯无监督网络中,尽管成功地学习了语音的低维表示,但隐藏层的音位选择性没有增加。这表明需要额外的学习约束或更复杂的模型来解释在自然语音操作的分布式学习中出现的类似电话的类别。
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