xml:id='mma4434-para-0001'> It has been reported that training deep neura'/> Resolution of singularities via deep complex‐valued neural networks
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Resolution of singularities via deep complex‐valued neural networks

机译:深层复合性神经网络分辨奇点

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xml:id="mma4434-para-0001"> It has been reported that training deep neural networks is more difficult than training shallow neural networks. Hinton et?al . proposed deep belief networks with a learning algorithm that trains one layer at a time. A much better generalization can be achieved when pre‐training each layer with an unsupervised learning algorithm. Since then, deep neural networks have been extensively studied. On the other hand, it has been revealed that singular points affect the training dynamics of the learning models such as neural networks and cause a standstill of training. Naturally, training deep neural networks suffer singular points. As described in this paper, we present a deep neural network model that has fewer singular points than the usual one. First, we demonstrate that some singular points in the deep real‐valued neural network, which is equivalent to a deep complex‐valued neural network, have been resolved as its inherent property. Such deep neural networks are less likely to become trapped in local minima or plateaus caused by critical points. Results of experiments on the two spirals problem, which has an extreme nonlinearity, support our theory. Copyright ? 2017 John Wiley & Sons, Ltd.
机译: XML:ID =“ MMA4434-PARA-0001“>据报道,培训深度神经网络比训练浅层神经网络更困难。 hinton 等?Al 。提出了具有学习算法的深度信仰网络,一次列举一层。在用无监督的学习算法预测每层时,可以实现更好的泛化。从那时起,深神经网络已经广泛研究。另一方面,据揭示了奇异点影响学习模型的训练动态,如神经网络,并导致训练静止。当然,训练深神经网络遭受奇异的分数。如本文所述,我们介绍了一个深度神经网络模型,其奇异点比通常的奇数。首先,我们证明了深度实值神经网络中的一些奇异点,其等同于深度复杂的神经网络,并被解决是其固有的属性。这种深神经网络的可能性不太可能被关键点引起的局部最小值或强加力。两轮螺旋问题的实验结果,具有极端的非线性,支持我们的理论。版权? 2017年John Wiley& SONS,LTD。

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