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Discriminatively Trained Sparse Inverse Covariance Matrices for Speech Recognition

机译:区分训练的稀疏逆协方差矩阵用于语音识别

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We propose to use acoustic models with sparse inverse covariance matrices to deal with the well-known over-fitting problem of discriminative training, especially when training data are limited. Compared with traditional diagonal or full covariance models, significant improvement by using sparse inverse covariance matrices has been achieved with maximum likelihood training. In state-of-the-art large vocabulary continuous speech recognition systems, discriminative training is commonly employed to achieve the best system performance. This paper investigates training acoustic models with sparse inverse covariance matrices using one of the most widely used discriminative training criteria–maximum mutual information (MMI). A lasso regularization term is added to the traditional objective function for MMI to automatically sparsify the inverse covariance matrices. The whole training process is then derived by maximizing the new objective function. This is achieved through iteratively maximizing a weak-sense auxiliary function. The final problem is shown to be a convex optimization problem and can be efficiently solved. Experimental results on the published Wall Street Journal and our collected Mandarin data sets show that the acoustic models with sparse inverse covariance matrices consistently outperform the conventional diagonal and full covariance models.
机译:我们建议使用带有稀疏逆协方差矩阵的声学模型来解决众所周知的判别训练的过拟合问题,尤其是在训练数据有限的情况下。与传统的对角或完全协方差模型相比,通过使用稀疏逆协方差矩阵可实现最大似然训练,从而实现了显着改进。在最先进的大词汇量连续语音识别系统中,通常采用判别训练来获得最佳的系统性能。本文研究了使用稀疏逆协方差矩阵的训练声学模型,该模型使用了最广泛使用的判别训练准则之一-最大互信息(MMI)。套索正则化项已添加到MMI的传统目标函数中,以自动稀疏逆协方差矩阵。然后,通过最大化新的目标函数来导出整个训练过程。这是通过迭代最大化弱感辅助功能来实现的。最终问题显示为凸优化问题,可以有效解决。在已发表的《华尔街日报》和我们收集的普通话数据集上的实验结果表明,具有稀疏逆协方差矩阵的声学模型始终优于常规对角和全协方差模型。

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