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Two-Stage Second Order Training in Feedforward Neural Networks

机译:前馈神经网络的两阶段二阶训练

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摘要

In this paper, we develop and demonstrate a new 2~nd order two-stage algorithm called OWO-Newton. First, two-stage algorithms are motivated and the Gauss Newton input weight Hessian matrix is developed. Block coordinate descent is used to apply Newton's algorithm alternately to the input and output weights. Its performance is comparable to Levenberg-Marquardt and it has the advantage of reduced computational complexity. The algorithm is shown to have a form of affine invariance.
机译:在本文中,我们开发并演示了一种称为OWO-Newton的新的二阶两阶段算法。首先,提出了两阶段算法,并开发了高斯牛顿输入权重黑森州矩阵。块坐标下降用于将牛顿算法交替应用于输入和输出权重。它的性能可与Levenberg-Marquardt媲美,并且具有降低计算复杂度的优势。该算法显示为具有仿射不变性。

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