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DEEP MAXOUT NEURAL NETWORKS FOR SPEECH RECOGNITION

机译:深度攀岩神经网络进行语音识别

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A recently introduced type of neural network called maxout has worked well in many domains. In this paper, we propose to apply maxout for acoustic models in speech recognition. The maxout neuron picks the maximum value within a group of linear pieces as its activation. This nonlinearity is a generalization to the rectified nonlinearity and has the ability to approximate any form of activation functions. We apply maxout networks to the Switchboard phone-call transcription task and evaluate the performances under both a 24-hour low-resource condition and a 300-hour core condition. Experimental results demonstrate that maxout networks converge faster, generalize better and are easier to optimize than rectified linear networks and sigmoid networks. Furthermore, experiments show that maxout networks reduce underfitting and are able to achieve good results without dropout training. Under both conditions, maxout networks yield relative improvements of 1.1-5.1% over rectified linear networks and 2.6-14.5% over sigmoid networks on benchmark test sets.
机译:最近引入的神经网络类型称为Maxout在许多域中工作得很好。在本文中,我们建议在语音识别中应用用于声学模型的Maxout。 Maxout Neuron在一组线性块中选择最大值作为其激活。该非线性是对整流非线性的概括,并且能够近似任何形式的激活功能。我们将MAXOUT网络应用于交换机电话呼叫转录任务,并在24小时低资源条件下评估表现和300小时的核心条件。实验结果表明,MaxOut网络会聚得更快,更泛化,比整流线性网络和Sigmoid网络更容易优化。此外,实验表明,Maxout网络减少了底层,并且能够在没有辍学训练的情况下实现良好的结果。在两个条件下,MAXOUT网络在基准测试集上产生了对整流的线性网络的相对改善1.1-5.1%,并在SIGMOID网络上获得2.6-14.5%。

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