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Improvements of Search Error Risk Minimization in Viterbi Beam Search for Speech Recognition

机译:用于语音识别的维特比光束搜索中搜索错误风险最小化的改进

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This paper describes improvements in a search error risk minimization approach to fast beam search for speech recognition. In our previous work, we proposed this approach to reduce search errors by optimizing the pruning criterion. While conventional methods use heuristic criteria to prune hypotheses, our proposed method employs a pruning function that makes a more precise decision using rich features extracted from each hypothesis. The parameters of the function can be estimated to minimize a loss function based on the search error risk. In this paper, we improve this method by introducing a modified loss function, arc-averaged risk, which potentially has a higher correlation with actual error rate than the original one. We also investigate various combinations of features. Experimental results show that further search error reduction over the original method is obtained in a lOOK-word vocabulary lecture speech transcription task.
机译:本文介绍了一种改进的搜索错误风险最小化方法,用于语音识别的快速波束搜索。在我们以前的工作中,我们提出了通过优化修剪标准来减少搜索错误的方法。虽然常规方法使用启发式标准来修剪假设,但我们提出的方法使用修剪功能,该修剪功能使用从每个假设中提取的丰富特征来做出更精确的决策。可以基于搜索错误风险来估计函数的参数以最小化损失函数。在本文中,我们通过引入修改后的损失函数(圆弧平均风险)来改进此方法,该函数可能与实际误差率之间的相关性高于原始误差率。我们还将研究各种功能组合。实验结果表明,在一个100字的词汇演讲语音转录任务中,与原始方法相比,可以进一步减少搜索错误。

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