Minimum Bayes risk discriminative language models for Arabic speech recognition

H. Kuo, E. Arisoy, L. Mangu, G. Saon
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引用次数: 18

Abstract

In this paper we explore discriminative language modeling (DLM) on highly optimized state-of-the-art large vocabulary Arabic broadcast speech recognition systems used for the Phase 5 DARPA GALE Evaluation. In particular, we study in detail a minimum Bayes risk (MBR) criterion for DLM. MBR training outperforms perceptron training. Interestingly, we found that our DLMs generalized to mismatched conditions, such as using a different acoustic model during testing. We also examine the interesting problem of unsupervised DLM training using a Bayes risk metric as a surrogate for word error rate (WER). In some experiments, we were able to obtain about half of the gain of the supervised DLM.
阿拉伯语语音识别的最小贝叶斯风险判别语言模型
在本文中,我们探索了判别语言建模(DLM)在高度优化的最先进的大词汇阿拉伯广播语音识别系统中用于DARPA GALE评估的第5阶段。特别地,我们详细研究了DLM的最小贝叶斯风险(MBR)准则。MBR训练优于感知器训练。有趣的是,我们发现我们的dlm可以推广到不匹配的条件,例如在测试期间使用不同的声学模型。我们还研究了无监督DLM训练的有趣问题,使用贝叶斯风险度量作为单词错误率(WER)的替代。在一些实验中,我们能够获得大约一半的监督DLM增益。
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