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Reduction of adjusting weights space dimension in feedforward artificial neural networks training

机译:减少前馈人工神经网络训练中的调整权重空间尺寸

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This report provides an approach to the reduction of the adjusting weights space dimension in two-layer multioutput feedforward artificial neural networks training. Our approach is based on linear-nonlinear network structure with respect to weights. Two training algorithms based on the Newton and Gauss method with pseudo-inversion for optimization were deduced. Training algorithms are extended to multilayer networks. The report carries the information about the analysis of the proposed training algorithms. Results of numerical experiments are also included.
机译:本报告提供了一种减少两层多输出前馈人工神经网络训练中的调整权重空间尺寸的方法。我们的方法基于权重的线性-非线性网络结构。推导了两种基于牛顿和高斯方法的伪逆训练算法。训练算法扩展到多层网络。该报告包含有关建议的训练算法分析的信息。数值实验的结果也包括在内。

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