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Latching chains in K-nearest-neighbor and modular small-world networks

机译:K近邻和模块化小世界网络中的闩锁链

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摘要

Latching dynamics retrieve pattern sequences successively by neural adaption and pattern correlation. We have previously proposed a modular latching chain model in Song et al. (2014) to better accommodate the structured transitions in the brain. Different cortical areas have different network structures. To explore how structural parameters like rewiring probability, threshold, noise and feedback connections affect the latching dynamics, two different connection schemes, K-nearest-neighbor network and modular network both having modular structure are considered. Latching chains are measured using two proposed measures characterizing length of intra-modular latching chains and sequential inter-modular association transitions. Our main findings include: (1) With decreasing threshold coefficient and rewiring probability, both the K-nearest-neighbor network and the modular network experience quantitatively similar phase change processes. (2) The modular network exhibits selectively enhanced latching in the small-world range of connectivity. (3) The K-nearest-neighbor network is more robust to changes in rewiring probability, while the modular network is more robust to the presence of noise pattern pairs and to changes in the strength of feedback connections. According to our findings, the relationships between latching chains in K-nearest-neighbor and modular networks and different forms of cognition and information processing emerging in the brain are discussed.
机译:锁存动力学通过神经适应和模式相关性依次检索模式序列。我们先前在Song等人中提出了模块化闩锁链模型。 (2014年)以更好地适应大脑中的结构化转变。不同的皮质区域具有不同的网络结构。为了探索诸如重新布线概率,阈值,噪声和反馈连接之类的结构参数如何影响锁存动力学,考虑了两种不同的连接方案,即K-最近邻网络和模块化网络,二者均具有模块化结构。闩锁链使用两种建议的量度方法进行测量,这些措施表征了模块内闩锁链的长度和顺序的模块间关联转换。我们的主要发现包括:(1)随着阈值系数的减小和重新布线的可能性,K最近邻网络和模块化网络在数量上都相似地经历了相变过程。 (2)模块化网络在较小的连接范围内表现出选择性增强的闩锁。 (3)K近邻网络对重新布线概率的变化更鲁棒,而模块化网络对噪声模式对的存在和反馈连接强度的变化更鲁棒。根据我们的发现,讨论了K近邻和模块化网络中闩锁链与大脑中出现的不同形式的认知和信息处理之间的关系。

著录项

  • 来源
    《Network》 |2015年第4期|1-24|共24页
  • 作者单位

    School of Computer Science and Technology, Harbin Institute of Technology, Harbin, China,Shenyang Institute of Automation, Chinese Academy of Sciences, Shenyang, China;

    School of Computer Science and Technology, Harbin Institute of Technology, Harbin, China;

    Department of Theory of Oscillations and Automatic Control, Radiophysical Faculty, N.I. Lobachevsky State University of Nizhny Novgorod, Russia;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Associative retrieval; latching chain; modular structure; Potts network; sequential activity; small-world;

    机译:关联检索;锁链模块化结构;Potts网络;顺序活动;小世界;
  • 入库时间 2022-08-18 01:47:20

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