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ACCELERATED TR-L-BFGS ALGORITHM FOR NEURAL NETWORK

机译:神经网络的加速TR-L-BFGS算法

摘要

Techniques herein train a multilayer perceptron, sparsify edges of a graph such as the perceptron, and store edges and vertices of the graph. Each edge has weight. A computer sparsifies perceptron edges. The computer performs a forward-backward pass on the perceptron to calculate a sparse Hessian matrix. Based on that Hessian, the computer performs quasi-Newton perceptron optimization. The computer repeats this until convergence. The computer stores edges in an array and vertices in another array. Each edge has weight and input and output indices. Each vertex has input and output indices. The computer inserts each edge into an input linked list based on its weight. Each link of the input linked list has the next input index of an edge. The computer inserts each edge into an output linked list based on its weight. Each link of the output linked list comprises the next output index of an edge.
机译:本文中的技术训练多层感知器,稀疏化诸如感知器的图的边缘,并存储图的边缘和顶点。每个边缘都有重量。计算机稀疏了感知器边缘。计算机对感知器执行前后移动,以计算稀疏的Hessian矩阵。基于该Hessian,计算机执行准牛顿感知器优化。计算机重复此操作直到收敛。计算机将边存储在一个数组中,并将顶点存储在另一个数组中。每个边都有权重以及输入和输出索引。每个顶点都有输入和输出索引。计算机根据其权重将每个边插入到输入链接列表中。输入链接列表的每个链接都有边的下一个输入索引。计算机根据其权重将每个边插入到输出链接列表中。输出链接列表的每个链接都包括边的下一个输出索引。

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