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Nonlinear Approaches to Automatic Elicitation of Distributed Oscillatory Clusters in Adaptive Self-organized System

机译:自动自动组织系统中分布式振荡簇自动引出的非线性方法

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Chaotic neural networks find more and more applications in pattern recognition systems. However hybrid multidisciplinary solutions that combine advances from physics and artificial intelligence fields tend to enrich the complexity of designed systems and add more discussion points. This paper questions the applicability of well known chaotic time-series metrics (Shannon entropy, Kolmogorov entropy, Fractal dimension, Gumenyuk metric, complete and lag synchronization estimations) to simplify elicitation of distributed oscillatory clusters that store clustering results of a problem. Computer modeling results gives evidence that in case of clustering simple datasets the metrics are rather effective; however the concept of averaging out agent's dynamics fails when the clusters in the input dataset are linearly non-separable.
机译:混沌神经网络在模式识别系统中找到了越来越多的应用。然而,混合多学科解决方案,即合并物理学和人工智能领域的进步往往丰富设计系统的复杂性并添加更多讨论点。本文提出了众所周知的混沌时间序列度量的适用性(Shannon Entropy,Kolmogorov熵,分形尺寸,Gumenyuk度量,完整和滞后同步估计,简化了存储群体群体结果的分布式振荡群集的诱因。计算机建模结果提供了证据,在聚类的情况下,单项数据集的情况是指标相当有效;然而,当输入数据集中的群集是线性不可分居的群集时,平均代理的动态的概念失败。

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