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Parallel Levenberg-Marquardt Algorithm Without Error Backpropagation

机译:无错误反向传播的并行Levenberg-Marquardt算法

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This paper presents a new parallel architecture of the Levenberg-Marquardt (LM) algorithm for training fully connected feedforward neural networks, which will also work for MLP but some cells will stay empty. This approach is based on a very interesting idea of learning neural networks without error backpropagation. The presented architecture is based on completely new parallel structures to significantly reduce a very high computational load of the LM algorithm. A full explanation of parallel three-dimensional neural network learning structures is provided.
机译:本文介绍了Levenberg-Marquardt(LM)算法的新并行体系结构,用于训练完全连接的前馈神经网络,该算法也适用于MLP,但某些单元将保持空白。这种方法基于一种非常有趣的思想,即学习神经网络而没有错误的反向传播。提出的体系结构基于全新的并行结构,以显着减少LM算法的很高的计算负荷。提供了并行三维神经网络学习结构的完整说明。

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