论文标题
分数优先附件无标度网络模型
The Fractional Preferential Attachment Scale-Free Network Model
论文作者
论文摘要
自然产生的许多网络都有两个通用属性:它们是在{prevatient attectment}的过程中形成的,并且它们不含比例。考虑到这些特征,通过干扰{优先附着的机制}的机制,我们提出了Barabási-albert模型的概括---“分数优先附着”(FPA)无标度网络模型---生成与时间独立程度分布$ p(k)$ p(k)$ 2 $ 2 $ 2 $ 2 $ 2 $ 2 $ 2 $ 2 $γ= 3 $对应于BA模型的典型值)。 In the FPA model, the element controlling the network properties is the $f$ parameter, where $f \in (0,1\rangle$. Depending on the different values of $f$ parameter, we study the statistical properties of the numerically generated networks. We investigate the topological properties of FPA networks such as degree distribution, degree correlation (network assortativity), clustering coefficient, average node degree, network diameter, average最短的路径长度和分间的特征将所获得的值与各种合成和现实世界网络的结果进行了比较。另外,事实证明,不管$ f $的值如何,FPA网络都不是分形的。
Many networks generated by nature have two generic properties: they are formed in the process of {preferential attachment} and they are scale-free. Considering these features, by interfering with mechanism of the {preferential attachment}, we propose a generalisation of the Barabási--Albert model---the 'Fractional Preferential Attachment' (FPA) scale-free network model---that generates networks with time-independent degree distributions $p(k)\sim k^{-γ}$ with degree exponent $2<γ\leq3$ (where $γ=3$ corresponds to the typical value of the BA model). In the FPA model, the element controlling the network properties is the $f$ parameter, where $f \in (0,1\rangle$. Depending on the different values of $f$ parameter, we study the statistical properties of the numerically generated networks. We investigate the topological properties of FPA networks such as degree distribution, degree correlation (network assortativity), clustering coefficient, average node degree, network diameter, average shortest path length and features of fractality. We compare the obtained values with the results for various synthetic and real-world networks. It is found that, depending on $f$, the FPA model generates networks with parameters similar to the real-world networks. Furthermore, it is shown that $f$ parameter has a significant impact on, among others, degree distribution and degree correlation of generated networks. Therefore, the FPA scale-free network model can be an interesting alternative to existing network models. In addition, it turns out that, regardless of the value of $f$, FPA networks are not fractal.