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An accelerated learning algorithm for multilayer perceptrons: optimization layer by layer

机译:多层感知器的加速学习算法:逐层优化

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摘要

Multilayer perceptrons are successfully used in an increasing number of nonlinear signal processing applications. The backpropagation learning algorithm, or variations hereof, is the standard method applied to the nonlinear optimization problem of adjusting the weights in the network in order to minimize a given cost function. However, backpropagation as a steepest descent approach is too slow for many applications. In this paper a new learning procedure is presented which is based on a linearization of the nonlinear processing elements and the optimization of the multilayer perceptron layer by layer. In order to limit the introduced linearization error a penalty term is added to the cost function. The new learning algorithm is applied to the problem of nonlinear prediction of chaotic time series. The proposed algorithm yields results in both accuracy and convergence rates which are orders of magnitude superior compared to conventional backpropagation learning.
机译:多层感知器已成功用于越来越多的非线性信号处理应用中。反向传播学习算法或其变体是应用于调整网络中权重以最小化给定成本函数的非线性优化问题的标准方法。但是,反向传播作为最速下降的方法对于许多应用来说太慢了。本文提出了一种新的学习程序,该程序基于非线性处理元件的线性化和多层感知器的逐层优化。为了限制引入的线性化误差,将惩罚项添加到成本函数。该新的学习算法被应用于混沌时间序列的非线性预测问题。与传统的反向传播学习相比,所提出的算法产生的结果的准确性和收敛速度都好几个数量级。

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