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首页> 外文期刊>IEEE Transactions on Neural Networks >Robust Adaptive Gradient-Descent Training Algorithm for Recurrent Neural Networks in Discrete Time Domain
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Robust Adaptive Gradient-Descent Training Algorithm for Recurrent Neural Networks in Discrete Time Domain

机译:离散时域递归神经网络的鲁棒自适应梯度下降训练算法

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For a recurrent neural network (RNN), its transient response is a critical issue, especially for real-time signal processing applications. The conventional RNN training algorithms, such as backpropagation through time (BPTT) and real-time recurrent learning (RTRL), have not adequately addressed this problem because they suffer from low convergence speed. While increasing the learning rate may help to improve the performance of the RNN, it can result in unstable training in terms of weight divergence. Therefore, an optimal tradeoff between RNN training speed and weight convergence is desired. In this paper, a robust adaptive gradient-descent (RAGD) training algorithm of RNN is developed based on a novel RNN hybrid training concept. It switches the training patterns between standard real-time online backpropagation (BP) and RTRL according to the derived convergence and stability conditions. The weight convergence and L 2-stability of the algorithm are derived via the conic sector theorem. The optimized adaptive learning maximizes the training speed of the RNN for each weight update without violating the stability and convergence criteria. Computer simulations are carried out to demonstrate the applicability of the theoretical results.
机译:对于递归神经网络(RNN),其瞬态响应是一个关键问题,尤其是对于实时信号处理应用而言。常规的RNN训练算法,例如时间反向传播(BPTT)和实时递归学习(RTRL),由于它们收敛速度低,因此无法充分解决此问题。虽然提高学习速度可能有助于改善RNN的性能,但它可能导致就体重差异而言不稳定的训练。因此,需要在RNN训练速度和权重收敛之间进行最佳权衡。本文基于一种新颖的RNN混合训练概念,开发了一种鲁棒的RNN自适应梯度下降(RAGD)训练算法。它根据导出的收敛性和稳定性条件在标准实时在线反向传播(BP)和RTRL之间切换训练模式。通过圆锥扇形定理推导了算法的权重收敛和L 2稳定性。优化的自适应学习可在不违反稳定性和收敛性标准的情况下,针对每次权重更新最大化RNN的训练速度。进行计算机仿真以证明理论结果的适用性。

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