在资源不足的南非语言中使用代码预测Lstm的代码切换语言建模

Joshua Jansen van Vüren, T. Niesler
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引用次数: 3

摘要

我们提出了一种新的LSTM语言模型体系结构,用于编码切换语音,其中包含一个显式建模语言切换的神经结构。该代码预测模型对四种资源不足的南非语言进行了实验评估,结果显示,与LSTM基线相比,该模型在困惑性以及特别是在代码切换方面的困惑性方面得到了一致的改善。在n-best评分期间,绝对语音识别单词错误率(0.5%-1.2%)以及代码切换时的错误(0.6%-2.3%)也得到了大幅降低。当用于数据增强和n-best评分时,我们的代码预测模型将单词错误率的绝对值进一步降低了0.8%-2.6%,并且始终优于基线LSTM。在所有四种语言对中观察到的相似和一致的趋势使我们得出结论,通过专门的语言模型组件对语言切换进行显式建模是一种适合于代码切换语音识别的策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Code-Switched Language Modelling Using a Code Predictive Lstm in Under-Resourced South African Languages
We present a new LSTM language model architecture for code-switched speech incorporating a neural structure that explicitly models language switches. Experimental evaluation of this code predictive model for four under-resourced South African languages shows consistent improvements in perplexity as well as perplexity specifically over code-switches compared to an LSTM baseline. Substantial reductions in absolute speech recognition word error rates (0.5%-1.2%) as well as errors specifically at code-switches (0.6%-2.3%) are also achieved during n-best rescoring. When used for both data augmentation and n-best rescoring, our code predictive model reduces word error rate by a further 0.8%-2.6% absolute and consistently outperforms a baseline LSTM. The similar and consistent trends observed across all four language pairs allows us to conclude that explicit modelling of language switches by a dedicated language model component is a suitable strategy for code-switched speech recognition.
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