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Accelerated Batch Learning of Convex Log-linear Models for LVCSR

机译:LVCSR凸对数模型的加速批量学习

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This paper describes a log-linear modeling framework suitable for large-scale speech recognition tasks. We introduce modifications to our training procedure that are required for extending our previous work on log-linear models to larger tasks. We give a detailed description of the training procedure with a focus on aspects that impact computational efficiency. The performance of our approach is evaluated on the English Quaero corpus,a challenging broadcast conversations task. The log-linear model consistently outperforms the maximum likelihood baseline system. Comparable performance to a system with minimum-phone-error training is achieved.
机译:本文介绍了一种适用于大规模语音识别任务的对数线性建模框架。我们对我们的培训程序进行了修改,这些程序将在较大的任务中扩展到对数线性模型上的先前工作。我们详细描述了培训程序,重点是影响计算效率的方面。我们的方法的表现是在英语Quaero语料库上进行评估,这是一个具有挑战性的广播对话任务。 log-linear模型始终如一地优于最大可能性基线系统。实现了具有最小手机错误培训的系统的可比性。

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