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Response Properties to Inputs of Memory Pattern Fragments in Three Types of Chaotic Neural Network Models

机译:三种类型的混沌神经网络模型对记忆模式片段输入的响应特性

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In this paper, we investigate response properties to inputs of memory pattern fragments in chaotic wandering states among three types of chaotic neural network (CNN) models, related with the instability of their orbits. From the computer experiments, Aihara model shows the highest success ratio and the shortest steps for all the memory pattern fragments. On the other hand, Nara & Davis model and Kuroiwa & Nara model show quite higher success ratio and shorter averaged steps than random search. Thus, choas in the three model is practical in the memory pattern search.
机译:在本文中,我们研究了三种类型的混沌神经网络(CNN)模型在混沌徘徊状态下对记忆模式片段输入的响应特性,以及它们的轨道不稳定性。通过计算机实验,Aihara模型显示了所有内存模式片段的最高成功率和最短步骤。另一方面,与随机搜索相比,Nara&Davis模型和Kuroiwa&Nara模型显示出更高的成功率和较短的平均步长。因此,三种模式中的选择在存储器模式搜索中是实用的。

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