一种用于深度神经网络训练的两阶段子空间信任域方法

V. Dudar, G. Chierchia, É. Chouzenoux, J. Pesquet, V. Semenov
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引用次数: 5

摘要

在本文中,我们提出了一种新的二阶方法来训练前馈神经网络。在每次迭代中,我们在低维子空间中构造代价函数的二次逼近。我们通过两个阶段的过程在一个信任区域内最小化这个近似:首先在嵌入的正曲率子空间内,然后是梯度下降步骤。这种方法使目标函数衰减快,防止收敛到鞍点,减轻了手动调整参数的需要。我们在基准数据集上证明了该算法的良好性能。
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A two-stage subspace trust region approach for deep neural network training
In this paper, we develop a novel second-order method for training feed-forward neural nets. At each iteration, we construct a quadratic approximation to the cost function in a low-dimensional subspace. We minimize this approximation inside a trust region through a two-stage procedure: first inside the embedded positive curvature subspace, followed by a gradient descent step. This approach leads to a fast objective function decay, prevents convergence to saddle points, and alleviates the need for manually tuning parameters. We show the good performance of the proposed algorithm on benchmark datasets.
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