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Using Sub-word-level Information for Confidence Estimation with Conditional Random Field Models

机译:使用子词级信息进行条件随机域模型的置信度估计

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The task of word-level confidence estimation (CE) for automatic speech recognition (ASR) systems stands to benefit from the combination of suitably defined input features from multiple information sources. However, the information sources of interest may not necessarily operate at the same level of granularity as the underlying ASR system. The research described here builds on previous work on confidence estimation for ASR systems using features extracted from word-level recognition lattices, by incorporating information at the sub-word level. Furthermore, the use of Conditional Random Fields (CRFs) with hidden states is investigated as a technique to combine information for word-level CE. Performance improvements are shown using the sub-word-level information in linear-chain CRFs with appropriately engineered feature functions, as well as when applying the hidden-state CRF model at the word level.
机译:自动语音识别(ASR)系统的单词级置信度估计(CE)任务将受益于来自多个信息源的适当定义的输入功能的组合。但是,感兴趣的信息源可能不一定与底层ASR系统在相同的粒度级别上运行。这里描述的研究建立在先前关于ASR系统置信度估计的工作的基础上,该工作使用从词级识别格中提取的特征,通过在子词级合并信息来进行。此外,研究了使用具有隐藏状态的条件随机字段(CRF)作为组合信息以实现单词级CE的技术。使用具有适当设计的功能功能的线性链CRF中的子单词级别信息,以及在单词级别应用隐藏状态CRF模型时,可以显示性能改进。

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