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Parametric Modeling of Sparse Random Trees Using 3D Copulas

机译:使用3D Copulas的稀疏随机树的参数化建模

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摘要

We provide a parametric modeling approach suitable for various kinds of hierarchical networks based on random geometric graphs. In these networks, we have two kinds of components, so-called high-level components (HLC) and low-level components (LLC). Each HLC is associated with a serving zone and all LLC within this area are connected to the corresponding HLC. So-called sparse LLC networks, where only a few LLC occur in the typical serving zone, are a non-negligible subdomain when investigating hierarchical networks. Therefore, we supply distributional results for structural characteristics where two LLC are independently and uniformly distributed along the segment system of the typical serving zone. In particular, we are interested in the joint distribution of three quantities, namely the length of the joint part of the shortest paths from the LLC to the HLC as well as the lengths of the corresponding disjoint remaining parts. In order to provide a parametric, three-dimensional distribution function for these random variables, we utilize a pseudo-maximum likelihood approach. More precisely, we fit parametric approximation formulas to the marginal density functions as well as parametric copula functions that match with the observed correlation structure. We also provide an asymptotic result for the joint distribution of the connection lengths as the size of the typical cell increases unboundedly. This general modeling approach is explicitly explained for the case that the random geometric graph is formed by the edges of random tessellations.
机译:我们提供了一种基于随机几何图的适用于各种层次网络的参数化建模方法。在这些网络中,我们有两种组件,所谓的高级组件(HLC)和低级组件(LLC)。每个HLC与一个服务区域相关联,并且该区域内的所有LLC均连接到相应的HLC。在研究分层网络时,所谓的稀疏LLC网络(在典型的服务区域中只有少数LLC发生)是不可忽略的子域。因此,我们提供了结构特征的分布结果,其中两个LLC沿着典型服务区域的分段系统独立且均匀地分布。特别是,我们对三个量的联合分布感兴趣,即从LLC到HLC的最短路径的联合部分的长度,以及相应的不相交剩余部分的长度。为了为这些随机变量提供参数化的三维分布函数,我们使用了伪最大似然方法。更准确地说,我们将参数逼近公式拟合到边际密度函数以及与观察到的相关结构匹配的参数copula函数。当典型单元的大小无限制地增加时,我们还为连接长度的联合分布提供了一个渐近结果。对于由随机镶嵌的边缘形成随机几何图的情况,将明确解释这种通用建模方法。

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