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Regularization of deep neural networks using a novel companion objective function

机译:使用新型伴侣目标函数对深度神经网络进行正则化

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A novel objective function of deep neuron networks with companion losses of both convolutional layers and non-linear activation functions is proposed, aiming to obtain more discriminative features. Conventional deep neuron networks were generally trained by the end-to-end supervised learning framework, whose performance is restricted by the training problems, such as the gradient vanishing problem, leading to less discriminative features, especially in lower layers. Instead, we build a novel objective function with two kinds of companion losses. The advantages of this framework are as follows: Firstly, it facilities the optimization by solving the gradient vanishing problem. Secondly, both kinds of companion supervised information contribute to obtain more discriminative features. Finally, a good initialization for fine-tuning could be obtained with the aid of the companion supervised training. Experimental results demonstrate the proposed model yielding better performances on the image classification benchmark dataset.
机译:提出了一种具有卷积层伴随损失和非线性激活函数的深度神经元网络的新型目标函数,旨在获得更多的判别特征。常规的深层神经元网络通常由端到端的监督学习框架进行训练,其性能受到训练问题(例如梯度消失问题)的限制,导致歧视性降低,尤其是在较低层。相反,我们建立了一种具有两种伴随损失的新颖目标函数。该框架的优点如下:首先,它通过解决梯度消失问题来促进优化。其次,两种同伴监督的信息都有助于获得更多的歧视性特征。最终,可以在陪伴监督训练的帮助下获得良好的微调初始化。实验结果表明,该模型在图像分类基准数据集上具有更好的性能。

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