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An Improved Conjugate Gradient Neural Networks Based on a Generalized Armijo Search Method

机译:基于广义Armijo搜索方法的改进的共轭梯度神经网络

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In this paper, by constructing a generalized Armijo search method, a novel conjugate gradient (CG) model has been proposed to training a common three-layer backpropagation (BP) neural network. Compared with the classical gradient descent method, this algorithm efficiently accelerates the convergence speed due to the existence of the additional conjugate direction. Essentially, the optimal learning rate of each epoch is determined by the given inexact line search strategy. The presented model does not significantly increase the computational cost in dealing with real applications. Two benchmark simulations have been performed to illustrate the promising advantages of the proposed algorithm.
机译:本文通过构造广义Armijo搜索方法,提出了一种新颖的共轭梯度(CG)模型来训练常见的三层反向传播(BP)神经网络。与经典的梯度下降法相比,该算法由于存在额外的共轭方向,因此有效地加快了收敛速度。本质上,每个时期的最佳学习率取决于给定的不精确线搜索策略。提出的模型并没有显着增加处理实际应用程序时的计算成本。进行了两个基准仿真,以说明所提出算法的有前途的优势。

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