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THE UD RLS ALGORITHM FOR TRAINING FEEDFORWARD NEURAL NETWORKS

机译:训练前馈神经网络的UD RLS算法

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摘要

A new algorithm for training feedforward multilayer neural networks is proposed. It is based on recursive least squares procedures and U-D factorization, which is a well-known technique in filter theory. It will be shown that due to the U-D factorization method, our algorithm requires fewer computations than the classical RLS applied to feedforward multilayer neural network training.
机译:提出了一种训练前馈多层神经网络的新算法。它基于递归最小二乘程序和U-D分解,这是滤波器理论中的一种众所周知的技术。结果表明,由于采用了U-D分解方法,因此与用于前馈多层神经网络训练的经典RLS相比,我们的算法所需的计算量更少。

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