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Multi-Task Learning in Deep Neural Networks for Mandarin-English Code-Mixing Speech Recognition

机译:深度神经网络中的多任务学习,用于普通话-英语代码混合语音识别

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Multi-task learning in deep neural networks has been proven to be effective for acoustic modeling in speech recognition. In the paper, this technique is applied to Mandarin-English code-mixing recognition. For the primary task of the senone classification, three schemes of the auxiliary tasks are proposed to introduce the language information to networks and improve the prediction of language switching. On the real-world Mandarin-English test corpus in mobile voice search, the proposed schemes enhanced the recognition on both languages and reduced the relative overall error rates by 3.5%, 3.8% and 5.8% respectively.
机译:事实证明,深度神经网络中的多任务学习对于语音识别中的声学建模有效。在本文中,该技术被应用于普通话-英语代码混合识别。针对senone分类的主要任务,提出了三种辅助任务方案,将语言信息引入网络,提高了语言切换的预测能力。在现实世界中移动语音搜索中的普通话-英语测试语料库上,所提出的方案增强了两种语言的识别能力,并将相对总体错误率分别降低了3.5%,3.8%和5.8%。

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