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Learning algorithm for the state feedback artificial neural network

机译:状态反馈人工神经网络的学习算法

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Most research and application of recursive neural network is mostly the unit feedback recursive neural network, the dynamic process of the system is usually determined by the dynamic feedback, so it is difficult to control the dynamic process, which limits application. The recursive feedback factor implied the neural network dynamic performance, the different state feedback factor expressed the different dynamic characteristic, and therefore, the research dynamic characteristic and the learning strategy for state feedback neural network has extremely important theory significance and the application value. For this shortage, we proposed a kind of the state feedback dynamic evolved neuron model, as well as neural network which is composed by the state feedback neuron and learning algorithm. For this kind of neural network its static weight implies the neural network static behavior, the state feedback factor indicates the neural network dynamic behavior. Not only can the static weight be corrected through the learning from the static knowledge, but its dynamic state feedback factor also can be corrected through learning from the dynamic knowledge. Not only can it learn the static knowledge, but also the dynamic knowledge. Not only may it remember the static information, but also the dynamic information. It becomes truly dynamics characteristic neural network. Finally in this paper, we summarized the recursive neural network static weight and the dynamic recursive coefficient study algorithm by the theorem form.
机译:递归神经网络的大多数研究和应用主要是单位反馈递归神经网络,系统的动态过程通常由动态反馈决定,因此难以控制动态过程,限制应用。递归反馈因子暗示神经网络动态性能,不同的状态反馈因子表示不同的动态特性,因此,国家反馈神经网络的研究动态特性和学习策略具有极为重要的理论意义和应用价值。对于这种短缺,我们提出了一种状态反馈动态演进神经元模型,以及由状态反馈神经元和学习算法组成的神经网络。对于这种神经网络,其静态重量意味着神经网络静态行为,状态反馈因子表示神经网络动态行为。不仅可以通过静态知识的学习来纠正静态体重,但是它可以通过从动态知识学习来纠正其动态状态反馈因素。它不仅可以学习静态知识,还可以了解动态知识。不仅可以记住静态信息,还可以记住动态信息。它变成了真正的动态特征神经网络。最后在本文中,我们通过定理形式总结了递归神经网络静态权重和动态递归系数研究算法。

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