Models of clifford recurrent neural networks and their dynamics

Y. Kuroe
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引用次数: 43

Abstract

Recently, models of neural networks in the real domain have been extended into the high dimensional domain such as the complex and quaternion domain, and several high-dimensional models have been proposed. These extensions are generalized by introducing Clifford algebra (geometric algebra). In this paper we extend conventional real-valued models of recurrent neural networks into the domain defined by Clifford algebra and discuss their dynamics. Since geometric product is non-commutative, some different models can be considered. We propose three models of fully connected recurrent neural networks, which are extensions of the real-valued Hopfield type neural networks to the domain defined by Clifford algebra. We also study dynamics of the proposed models from the point view of existence conditions of an energy function. We discuss existence conditions of an energy function for two classes of the Hopfield type Clifford neural networks.
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clifford递归神经网络模型及其动力学
近年来,神经网络模型已从实域扩展到复数域和四元数域等高维域,并提出了几种高维模型。这些扩展通过引入Clifford代数(几何代数)进行推广。本文将传统的递归神经网络的实值模型推广到Clifford代数定义的领域,并讨论了它们的动力学问题。由于几何积是不可交换的,所以可以考虑一些不同的模型。本文提出了三种全连通递归神经网络模型,它们是实值Hopfield型神经网络在Clifford代数定义域上的扩展。我们还从能量函数存在条件的角度研究了所提模型的动力学。讨论了两类Hopfield型Clifford神经网络能量函数的存在性条件。
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