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Cooperation-Induced Topological Complexity: A Promising Road to Fault Tolerance and Hebbian Learning

机译:合作引起的拓扑复杂性:容错和Hebbian学习的有前途的道路

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摘要

According to an increasing number of researchers intelligence emerges from criticality as a consequence of locality breakdown and long-range correlation, well known properties of phase transition processes. We study a model of interacting units, as an idealization of real cooperative systems such as the brain or a flock of birds, for the purpose of discussing the emergence of long-range correlation from the coupling of any unit with its nearest neighbors. We focus on the critical condition that has been recently shown to maximize information transport and we study the topological structure of the network of dynamically linked nodes. Although the topology of this network depends on the arbitrary choice of correlation threshold, namely the correlation intensity selected to establish a link between two nodes; the numerical calculations of this paper afford some important indications on the dynamically induced topology. The first important property is the emergence of a perception length as large as the flock size, thanks to some nodes with a large number of links, thus playing the leadership role. All the units are equivalent and leadership moves in time from one to another set of nodes, thereby insuring fault tolerance. Then we focus on the correlation threshold generating a scale-free topology with power index ν ≈ 1 and we find that if this topological structure is selected to establish consensus through the linked nodes, the control parameter necessary to generate criticality is close to the critical value corresponding to the all-to-all coupling condition. We find that criticality in this case generates also a third state, corresponding to a total lack of consensus. However, we make a numerical analysis of the dynamically induced network, and we find that it consists of two almost independent structures, each of which is equivalent to a network in the all-to-all coupling condition. This observation confirms that cooperation makes the system evolve toward favoring consensus topological structures. We argue that these results are compatible with both Hebbian learning and fault tolerance.
机译:根据越来越多的研究人员的研究,由于局部破坏和远距离相关以及相变过程的众所周知的特性,因此从临界中获得了智能。我们研究相互作用单元的模型,作为诸如大脑或鸟群之类的真实合作系统的理想化模型,目的是讨论任何单元与其最近邻居之间的耦合所产生的远距离相关性。我们关注于最近显示出的最大化信息传输的临界条件,我们研究了动态链接节点网络的拓扑结构。尽管该网络的拓扑结构取决于相关阈值的任意选择,即选择相关强度来建立两个节点之间的链接;本文的数值计算为动态诱导拓扑提供了一些重要的指示。第一个重要特性是,由于某些节点具有大量链接,因此出现了与群大小一样大的感知长度,从而发挥了领导作用。所有单元都是等效的,领导层会及时从一个节点移动到另一组节点,从而确保了容错能力。然后,我们集中在生成功率指数为ν≈1的无标度拓扑的相关阈值上,我们发现,如果选择此拓扑结构以通过链接的节点建立共识,则生成临界所需的控制参数接近临界值对应于所有耦合条件。我们发现,在这种情况下,关键程度还会产生第三种状态,这对应于完全缺乏共识。但是,我们对动态感应网络进行了数值分析,发现它由两个几乎独立的结构组成,每个结构都相当于在所有耦合条件下的网络。这一观察结果证实了合作使系统朝着有利于共识拓扑结构的方向发展。我们认为,这些结果与Hebbian学习和容错能力均兼容。

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