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An Investigation of Code-Switching Attitude Dependent Language Modeling

机译:代码切换姿态依赖语言建模的调查

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In this paper, we investigate the adaptation of language modeling for conversational Mandarin-English Code-Switching (CS) speech and its effect on speech recognition performance. First, we investigate the prediction of code switches based on textual features with focus on Partof- Speech (POS) tags. We show that the switching attitude is speaker dependent and utilize this finding to cluster the training speakers into classes with similar switching attitude. Second, we apply recurrent neural network language models which integrate the POS information into the input layer and factorize the output layer into languages for modeling CS. Furthermore, we adapt the background N-Gram and RNN language model to the different Code-Switching attitudes of the speaker clusters which lead to significant reductions in terms of perplexity. Finally, using these adapted language models we rerun the speech recognition system for each speaker and achieve improvements in terms of mixed error rate.
机译:在本文中,我们调查了语言建模对会话普通话 - 英语代码切换(CS)语音的适应及其对语音识别性能的影响。首先,我们根据具有专注于Partof-语音(POS)标记的文本特征来调查代码交换机的预测。我们表明,切换态度是扬声器依赖的,并利用这一发现将训练扬声器聚集成具有类似的切换态度的课程。其次,我们应用经常性的神经网络语言模型,将POS信息集成到输入层中,并将输出层进行分解为用于建模CS的语言。此外,我们将背景N-GRAM和RNN语言模型调整到扬声器集群的不同代码切换态度,这导致困惑的显着降低。最后,使用这些适应的语言模型,我们重新运行了每个扬声器的语音识别系统,并在混合误差率方面实现改进。

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