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Round-robin duel discriminative language models in one-pass decoding with on-the-fly error correction

机译:一站式解码中的循环对决判别语言模型,具有即时纠错功能

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This paper focuses on discriminative n-gram language models for large vocabulary speech recognition. We have proposed a novel training method called the round-robin duel discrimination (R2D2) method. Our previous report showed that R2D2 outperforms conventional methods on word n-gram based discriminative language models (DLMs). In this paper, we achieve additional error reduction and one-pass decoding at the same time. The keys to achieving this are the use of morphological features and the on-the-fly composition of weighted finite-state transducers (WFSTs) that represent both word and morphological discriminative features. Our experimental results show that R2D2 can reduce recognition errors more effectively than conventional methods in the reranking of n-best hypotheses and one-pass decoding can be accomplished with an equivalent accuracy.
机译:本文着重于用于大词汇量语音识别的判别性n元语法模型。我们提出了一种新颖的训练方法,称为循环决斗判别(R2D2)方法。我们以前的报告显示,R2D2在基于单词n-gram的歧视性语言模型(DLM)方面优于传统方法。在本文中,我们同时实现了额外的错误减少和单遍解码。实现此目的的关键是形态特征的使用以及表示单词和形态学辨别特征的加权有限状态换能器(WFST)的动态组合。我们的实验结果表明,在重新排列n个最佳假设的过程中,R2D2可以比传统方法更有效地减少识别错误,并且可以以同等的精度完成单遍解码。

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