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Discriminative training for speech recognition is compensating for statistical dependence in the HMM framework

机译:语音识别的歧视性训练正在补偿HMM框架中的统计依赖性

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The parameters of the standard Hidden Markov Model framework for speech recognition are typically trained via Maximum Likelihood. However, better recognition performance is achievable with discriminative training criteria like Maximum Mutual Information or Minimum Phone Error. While it is generally accepted that these discriminative criteria are better suited to minimizing Word Error Rate, there is very little qualitative intuition for how the improvements are achieved. Through a series of “resampling” experiments, we show that discriminative training (MPE in particular) appears to be compensating for a specific incorrect assumption of the HMM—that speech frames are conditionally independent.
机译:用于语音识别的标准隐马尔可夫模型框架的参数通常通过最大似然来训练。但是,使用诸如最大相互信息或最小电话错误之类的判别训练标准可以实现更好的识别性能。尽管人们普遍认为这些判别标准更适合于最大程度地降低单词错误率,但是对于如何实现改进几乎没有定性的直觉。通过一系列的“重采样”实验,我们证明了判别训练(尤其是MPE)似乎是在补偿HMM的一个特定错误假设,即语音帧是有条件独立的。

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