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A class of scale-free networks with fractal structure based on subshift of finite type

机译:一类基于有限类型子移位的分形结构无标度网络

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In this paper, given a time series generated by a certain dynamical system, we construct a new class of scale-free networks with fractal structure based on the subshift of finite type and base graphs. To simplify our model, we suppose the base graphs are bipartite graphs and the subshift has the special form. When embedding our growing network into the plane, we find its image is a graph-directed self-affine fractal, whose Hausdorff dimension is related to the power law exponent of cumulative degree distribution. It is known that a large spectral gap in terms of normalized Laplacian is usually associated with small mixing time, which makes facilitated synchronization and rapid convergence possible. Through an elaborate analysis of our network, we can estimate its Cheeger constant, which controls the spectral gap by Cheeger inequality. As a result of this estimation, when the bipartite base graph is complete, we give a sharp condition to ensure that our networks are well-connected with rapid mixing property. (C) 2014 AIP Publishing LLC.
机译:在给定由某个动力学系统生成的时间序列的情况下,我们基于有限类型和基图的子位移构造了一类新的具有分形结构的无标度网络。为了简化我们的模型,我们假设基本图是二部图,并且子移位具有特殊形式。当将我们不断增长的网络嵌入到平面中时,我们发现其图像是一个图导向的自仿射形,其Hausdorff维数与累积度分布的幂律指数有关。众所周知,就归一化的拉普拉斯算子而言,较大的谱隙通常与较小的混合时间有关,这使得易于同步和快速收敛成为可能。通过对网络的精心分析,我们可以估计其Cheeger常数,该常数通过Cheeger不等式控制光谱间隙。估计的结果是,当二分基图完成时,我们给出了一个尖锐的条件,以确保我们的网络之间具有良好的快速混合特性。 (C)2014 AIP Publishing LLC。

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