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A Robust Learning Algorithm for Feedforward Neural Networks with Adaptive Spline Activation Function

机译:具有自适应样条激活功能的前馈神经网络的强大学习算法

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This paper proposed an adaptive robust learning algorithm for spline-based neural network. Adaptive influence function was dynamically added before objective function to modify the learning gain of back-propagate learning method in neural networks with spline activation functions. Besides the nonlinear activation functions in neurons and linear interconnections between neurons, objective function also changes the shape during iteration. This employed neural network the robust ability to reject gross errors and to learn the underlying input-output mapping from training data. Simulation results also conformed that compared to common learning method, convergence rate of this algorithm is improved for: 1) more free parameters are updated simultaneously in each iteration; 2) the influence of incorrect samples is gracefully suppressed.
机译:本文提出了一种基于样条状神经网络的自适应稳健学习算法。在目标函数之前动态地添加了自适应影响功能,以修改具有样条激活功能的神经网络中的反传播学习方法的学习增益。除神经元中的非线性活化功能外,神经元之间的线性互连外,客观函数还会在迭代期间改变形状。这采用了神经网络抑制粗略错误的强大能力,并从训练数据中了解底层的输入输出映射。仿真结果还符合共同学习方法相比,该算法的收敛速率得到改善:1)在每次迭代中同时更新更多的自由参数; 2)不正确的样品的影响优雅地被抑制。

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