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Maximum mutual information neural networks for hybrid connectionist-HMM speech recognition systems

机译:混合连接器-HMM语音识别系统的最大互信息神经网络

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This paper proposes a novel approach for a hybrid connectionist-hidden Markov model (HMM) speech recognition system based on the use of a neural network as vector quantizer. The neural network is trained with a new learning algorithm offering the following innovations. (1) It is an unsupervised learning algorithm for perceptron-like neural networks that are usually trained in the supervised mode. (2) Information theory principles are used as learning criteria, making the network especially suitable for combination with a HMM-based speech recognition system. (3) The neural network is not trained using the standard error-backpropagation algorithm but using instead a newly developed self-organizing learning approach. The use of the hybrid system with the neural vector quantizer results in a 25% error reduction compared with the same HMM system using a standard k-means vector quantizer. The training algorithm can be further refined by using a combination of unsupervised and supervised learning algorithms. Finally, it is demonstrated how the new learning approach can be applied to multiple-feature hybrid speech recognition systems, using a joint information theory-based optimization procedure for the multiple neural codebooks, resulting in a 30% error reduction.
机译:本文提出了一种基于神经网络作为矢量量化器的混合连接隐藏式马尔可夫模型(HMM)语音识别系统的新方法。用新的学习算法训练神经网络,该算法提供以下创新。 (1)它是一种通常在监督模式下训练的类似感知器的神经网络的无监督学习算法。 (2)信息论原理被用作学习准则,使得该网络特别适合与基于HMM的语音识别系统结合使用。 (3)神经网络不是使用标准的误差反向传播算法进行训练的,而是使用一种新开发的自组织学习方法来训练的。与使用标准k均值矢量量化器的相同HMM系统相比,将混合系统与神经矢量量化器配合使用可减少25%的误差。可以通过结合使用无监督学习算法和有监督学习算法来进一步完善训练算法。最后,通过使用基于联合信息论的多种神经密码本优化程序,证明了如何将新的学习方法应用于多特征混合语音识别系统,从而减少了30%的错误。

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