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Dynamic pattern evolution on scale-free networks

机译:无标度网络上的动态模式演变

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摘要

A general class of dynamic models on scale-free networks is studied by analytical methods and computer simulations. Each network consists of N vertices and is characterized by its degree distribution, P(k), which represents the probability that a randomly chosen vertex is connected to k nearest neighbors. Each vertex can attain two internal states described by binary variables or Ising-like spins that evolve in time according to local majority rules. Scale-free networks, for which the degree distribution has a power law tail P(k) ~ k~(-γ) are shown to exhibit qualitatively different dynamic behavior for γ < 5/2 and γ > 5/2, shedding light on the empirical observation that many real-world networks are scale-free with 2 < γ < 5/2. For 2 < γ < 5/2, strongly disordered patterns decay within a finite decay time even in the limit of infinite networks. For y > 5/2, on the other hand, this decay time diverges as In (N) with the network size N. An analogous distinction is found for a variety of more complex models including Hopfield models for associative memory networks. In the latter case, the storage capacity is found, within mean field theory, to be independent of N in the limit of large N for γ > 5/2 but to grow as N~α with α = (5 - 2γ)/(γ - 1) for 2 < γ < 5/2.
机译:通过分析方法和计算机仿真研究了无标度网络上的一般动力学模型。每个网络由N个顶点组成,并以其度数分布P(k)为特征,该度数表示随机选择的顶点连接到k个最近邻居的概率。每个顶点可以达到两个内部状态,这些状态由二进制变量或类似于Ising的自旋描述,并根据局部多数规则随时间变化。对于度分布具有幂律尾部P(k)〜k〜(-γ)的无标度网络,当γ<5/2和γ> 5/2时,表现出定性不同的动态行为,从而减轻了根据经验观察,许多现实世界的网络都是无标度的,且2 <γ<5/2。对于2 <γ<5/2,即使在无限网络的限制下,强无序模式也会在有限的衰减时间内衰减。另一方面,对于y> 5/2,此衰减时间随着In(N)与网络大小N的变化而发散。对于各种更复杂的模型,包括用于关联存储网络的Hopfield模型,发现了类似的区别。在后一种情况下,根据平均场论,发现在γ> 5/2时,在大N的限制下,存储容量与N无关,但随着α=(5-2γ)/( γ-1)的2 <γ<5/2。

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