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Feature dimension reduction using reduced-rank maximum likelihood estimation for hidden Markov models

机译:使用隐马尔可夫模型的降秩最大似然估计进行特征维降

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This paper presents a new method of feature dimension reduction in hidden Markov modeling (HMM) for speech recognition. The key idea is to apply reduced rank maximum likelihood estimation in the M-step of the usual Baum-Welch (1972) algorithm for estimating HMM parameters such that the estimates of the Gaussian distribution parameters are restricted in a sub-space of reduced dimensionality. There are two main advantages of applying this method in HMM: feature dimension reduction is achieved simultaneously with the estimation of HMM parameters, therefore it guarantees that the likelihood function is monotonically increasing; and it requires very little extra computation in addition to the standard Baum-Welch algorithm, hence it can be easily incorporated in the existing speech recognition systems using HMMs.
机译:本文提出了一种新的语音识别隐马尔可夫模型(HMM)中特征量约简的新方法。关键思想是在通常的Baum-Welch(1972)算法的M步中应用降秩最大似然估计来估计HMM参数,以便将高斯分布参数的估计限制在降维子空间中。在HMM中应用该方法有两个主要优点:与HMM参数的估计同时实现了特征维的减少,因此保证了似然函数单调增加。除了标准的Baum-Welch算法外,它几乎不需要额外的计算,因此可以很容易地将其合并到使用HMM的现有语音识别系统中。

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