Isokawa Teijiro, Nishimura Haruhiko, Kamiura Naotake, Matsui Nobuyuki
Division of Computer Engineering, Graduate School of Engineering, University of Hyogo, Japan.
Int J Neural Syst. 2008 Apr;18(2):135-45. doi: 10.1142/S0129065708001440.
Associative memory networks based on quaternionic Hopfield neural network are investigated in this paper. These networks are composed of quaternionic neurons, and input, output, threshold, and connection weights are represented in quaternions, which is a class of hypercomplex number systems. The energy function of the network and the Hebbian rule for embedding patterns are introduced. The stable states and their basins are explored for the networks with three neurons and four neurons. It is clarified that there exist at most 16 stable states, called multiplet components, as the degenerated stored patterns, and each of these states has its basin in the quaternionic networks.
本文研究了基于四元数霍普菲尔德神经网络的联想记忆网络。这些网络由四元数神经元组成,输入、输出、阈值和连接权重均用四元数表示,四元数是一类超复数系统。介绍了网络的能量函数和嵌入模式的赫布规则。研究了具有三个神经元和四个神经元的网络的稳定状态及其吸引域。结果表明,作为退化存储模式,最多存在16个稳定状态,称为多重分量,并且这些状态中的每一个在四元数网络中都有其吸引域。