Chaotic associative memory for sequential patterns

Y. Osana, M. Hagiwara
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引用次数: 3

Abstract

We propose a chaotic associative memory for sequential patterns (CAMSP). The proposed CAMSP is based on a chaotic associative memory composed of chaotic neurons. In the conventional chaotic neural network, when a stored pattern is given to the network as an external input continuously, the input pattern is searched. The CAM makes use of this property in order to separate the superimposed patterns. In this research, the CAM is applied to associations for sequential patterns. The proposed model has the following features: 1) it can deal with associations for the sequential patterns; 2) it can realize associations by considering patterns' history; and 3) it is robust for noisy input. A series of computer simulations shows the effectiveness of the proposed model.
顺序模式的混沌联想记忆
我们提出了一种时序模式的混沌联想记忆(CAMSP)。所提出的CAMSP是基于混沌神经元组成的混沌联想记忆。在传统的混沌神经网络中,将存储的模式作为连续的外部输入输入到网络中,对输入模式进行搜索。CAM利用这个属性来分离叠加的模式。在本研究中,CAM应用于序列模式的关联。该模型具有以下特点:1)能够处理序列模式的关联;2)可以通过考虑模式的历史来实现关联;3)对噪声输入具有鲁棒性。一系列的计算机仿真表明了该模型的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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