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A geometric view of neural networks using homotopy

机译:使用同型神经网络的几何图

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A homotopy approach is formulated for solving for the weights of a network. It is shown how this leads simply to a geometric interpretation of the weight optimization problem. The homotopy approach accounts for distinct sets of weights and infinite weights. The geometric interpretation further aids in explaining the appearance of local minima in the network, the appearance of infinite weights, and the similarities and differences between optimizing the weights in a nonlinear network, and the weights in a linear network.
机译:配方谐振方法以解决网络的重量。它显示了这意味着如何仅仅引发重量优化问题的几何解释。同型方法占了不同的重量和无限权重。几何解释进一步有助于解释网络中局部最小值的外观,无限权重的外观,以及优化非线性网络中的权重之间的相似性和差异,以及线性网络中的权重。

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