基于自动学习稀疏逆协方差矩阵的低资源语音识别

Weibin Zhang, Pascale Fung
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引用次数: 4

摘要

用有限的训练数据训练的全协方差声学模型由于有大量的自由参数,对未知的测试数据泛化效果较差。我们建议使用稀疏逆协方差矩阵来解决这个问题。以往的稀疏反协方差方法的性能从未优于全协方差方法。提出了一种在训练过程中自动将逆协方差矩阵的结构驱动为稀疏的方法。在最大似然估计的传统目标函数基础上加入L1正则化,提出了一种新的目标函数。将稀疏逆协方差矩阵的图形lasso估计方法与期望最大化算法相结合,利用新的目标函数学习HMM的参数。实验结果表明,我们只需要约25%的逆协方差矩阵参数为非零,就能达到与全协方差系统相同的性能。我们提出的使用稀疏逆协方差高斯的系统也显著优于在有限数据上训练的使用全协方差高斯的系统。
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Lowresource speech recognition with automatically learned sparse inverse covariance matrices
Full covariance acoustic models trained with limited training data generalize poorly to unseen test data due to a large number of free parameters. We propose to use sparse inverse covariance matrices to address this problem. Previous sparse inverse covariance methods never outperformed full covariance methods. We propose a method to automatically drive the structure of inverse covariance matrices to sparse during training. We use a new objective function by adding L1 regularization to the traditional objective function for maximum likelihood estimation. The graphic lasso method for the estimation of a sparse inverse covariance matrix is incorporated into the Expectation Maximization algorithm to learn parameters of HMM using the new objective function. Experimental results show that we only need about 25% of the parameters of the inverse covariance matrices to be nonzero in order to achieve the same performance of a full covariance system. Our proposed system using sparse inverse covariance Gaussians also significantly outperforms a system using full covariance Gaussians trained on limited data.
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