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Sequence-discriminative training of recurrent neural networks

机译:递归神经网络的序列区分训练

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We investigate sequence-discriminative training of long shortterm memory recurrent neural networks using the maximum mutual information criterion. We show that although recurrent neural networks already make use of the whole observation sequence and are able to incorporate more contextual information than feed forward networks, their performance can be improved with sequence-discriminative training. Experiments are performed on two publicly available handwriting recognition tasks containing English and French handwriting. On the English corpus, we obtain a relative improvement in WER of over 11% with maximum mutual information (MMI) training compared to cross-entropy training. On the French corpus, we observed that it is necessary to interpolate the MMI objective function with cross-entropy.
机译:我们研究使用最大互信息准则的长期短期记忆递归神经网络的序列判别训练。我们显示,尽管递归神经网络已经利用了整个观察序列,并且能够比前馈网络包含更多的上下文信息,但是通过序列区分训练可以提高其性能。对两个公开可用的包含英语和法语手写体的手写体识别任务进行了实验。在英语语料库上,与交叉熵训练相比,通过最大互信息(MMI)训练,我们在WER方面获得了11%以上的相对改善。在法国语料库上,我们观察到有必要用交叉熵对MMI目标函数进行插值。

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