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首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >Dual extended Kalman filtering in recurrent neural networks(1).
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Dual extended Kalman filtering in recurrent neural networks(1).

机译:递归神经网络中的双重扩展卡尔曼滤波(1)。

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摘要

In the classical deterministic Elman model, the estimation of parameters must be very accurate. Otherwise, the system performance is very poor. To improve the system performance, we can use a Kalman filtering algorithm to guide the operation of a trained recurrent neural network (RNN). In this case, during training, we need to estimate the state of hidden layer, as well as the weights of the RNN. This paper discusses how to use the dual extended Kalman filtering (DEKF) for this dual estimation and how to use our proposing DEKF for removing some unimportant weights from a trained RNN. In our approach, one Kalman algorithm is used for estimating the state of the hidden layer, and one recursive least square (RLS) algorithm is used for estimating the weights. After training, we use the error covariance matrix of the RLS algorithm to remove unimportant weights. Simulation showed that our approach is an effective joint-learning-pruning method for RNNs under the online operation.
机译:在经典的确定性Elman模型中,参数的估计必须非常准确。否则,系统性能会很差。为了提高系统性能,我们可以使用卡尔曼滤波算法来指导经过训练的递归神经网络(RNN)的操作。在这种情况下,在训练期间,我们需要估计隐藏层的状态以及RNN的权重。本文讨论了如何使用双重扩展卡尔曼滤波(DEKF)进行这种双重估计,以及如何使用我们提出的DEKF从经过训练的RNN中去除一些不重要的权重。在我们的方法中,一种Kalman算法用于估计隐藏层的状态,一种递归最小二乘(RLS)算法用于估计权重。训练后,我们使用RLS算法的误差协方差矩阵去除不重要的权重。仿真表明,该方法是在线操作下有效的RNN联合学习修剪方法。

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