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Automatic confidence score mapping for adapted speech recognition systems

机译:适用于语音识别系统的自动置信度得分映射

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In practical automatic speech recognition (ASR) systems, the effects of modeling improvements on both in-grammar (IG) and out-of-grammar (OOG) errors are important. While adapted models are known to decrease IG error, they may increase OOG error. This is because adapted models tend to produce higher confidence scores, resulting in fewer OOG utterances being rejected at the same confidence-score threshold. We present an algorithm to map confidence scores, so that model adaptation gives reduced IG error with no degradation in OOG error. Experimental results are presented in the context of unsupervised task adaptation.
机译:在实际的自动语音识别(ASR)系统中,建模改进对语法内(IG)和语法外(OOG)错误的影响都很重要。尽管已知自适应模型可以减少IG误差,但它们可能会增加OOG误差。这是因为经过调整的模型倾向于产生更高的置信度得分,从而导致在相同的置信度得分阈值下拒绝的OOG话语更少。我们提出了一种映射置信度得分的算法,以便模型自适应可以降低IG误差,而不会降低OOG误差。实验结果是在无人监督的任务适应环境下提出的。

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