Extending noise robust structured support vector machines to larger vocabulary tasks

Shi-Xiong Zhang, M. Gales
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引用次数: 7

Abstract

This paper describes a structured SVM framework suitable for noise-robust medium/large vocabulary speech recognition. Several theoretical and practical extensions to previous work on small vocabulary tasks are detailed. The joint feature space based on word models is extended to allow context-dependent triphone models to be used. By interpreting the structured SVM as a large margin log-linear model, illustrates that there is an implicit assumption that the prior of the discriminative parameter is a zero mean Gaussian. However, depending on the definition of likelihood feature space, a non-zero prior may be more appropriate. A general Gaussian prior is incorporated into the large margin training criterion in a form that allows the cutting plan algorithm to be directly applied. To further speed up the training process, 1-slack algorithm, caching competing hypothesis and parallelization strategies are also proposed. The performance of structured SVMs is evaluated on noise corrupted medium vocabulary speech recognition task: AURORA 4.
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将噪声鲁棒结构化支持向量机扩展到更大的词汇量任务
本文描述了一种适合于噪声鲁棒的中/大词汇量语音识别的结构化支持向量机框架。本文详细介绍了对先前小词汇任务研究的理论和实践扩展。扩展了基于词模型的联合特征空间,允许使用上下文相关的三音模型。通过将结构化支持向量机解释为一个大余量对数线性模型,说明有一个隐含的假设,即判别参数的先验是零均值高斯。然而,根据似然特征空间的定义,非零先验可能更合适。将一般高斯先验以一种允许切割计划算法直接应用的形式合并到大余量训练准则中。为了进一步加快训练过程,还提出了1-slack算法、缓存竞争假设和并行化策略。对结构化支持向量机在噪声介质词汇语音识别任务AURORA 4中的性能进行了评价。
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