论文标题
征收几何图
Levy geometric graphs
论文作者
论文摘要
我们提出了一个具有出色属性的新图形系列。它们是通过在距离小于给定比例小的距离时连接随机步行的点来获得的。他们的程度(邻居数)不取决于图表的大小,而仅取决于所考虑的刻度。它遵循伽马分布,因此提出了指数衰减。征费的航班是特定的随机步行,具有一些无限差异的幂律增量。从它们构建几何图时,我们从维数参数中表明,连接的组件(簇)的数量遵循比例尺的逆力。其组件大小的分布适当地归一化,是规模不变的,它反映了基础过程的自相似性质。这允许测试图(包括非空间图)是否可能是由于基本征税过程而产生的。当量表增加时,这些图永远不会趋向于单个群集,即巨型组件。换句话说,虽然过程的自相关缩放是距离的力量,但它们从不经历渗透类型的相变。征费图可能会在社区检测中找到应用程序,以及对集体行为的分析,就像面对面的交互网络一样。
We present a new family of graphs with remarkable properties. They are obtained by connecting the points of a random walk when their distance is smaller than a given scale. Their degree (number of neighbors) does not depend on the graph's size but only on the considered scale. It follows a Gamma distribution and thus presents an exponential decay. Levy flights are particular random walks with some power-law increments of infinite variance. When building the geometric graphs from them, we show from dimensional arguments, that the number of connected components (clusters) follows an inverse power of the scale. The distribution of the size of their components, properly normalized, is scale-invariant, which reflects the self-similar nature of the underlying process. This allows to test if a graph (including non-spatial ones) could possibly result from an underlying Levy process. When the scale increases, these graphs never tend towards a single cluster, the giant component. In other words, while the autocorrelation of the process scales as a power of the distance, they never undergo a phase transition of percolation type. The Levy graphs may find applications in community detection and in the analysis of collective behaviors as in face-to-face interaction networks.