Sarshar Nima, Roychowdhury Vwani
Department of Electrical Engineering, University of California, Los Angeles, California 90095, USA.
Phys Rev E Stat Nonlin Soft Matter Phys. 2005 Aug;72(2 Pt 2):026114. doi: 10.1103/PhysRevE.72.026114. Epub 2005 Aug 16.
This paper develops a framework for analyzing and designing dynamic networks comprising different classes of nodes that coexist and interact in one shared environment. We consider ad hoc (i.e., nodes can leave the network unannounced, and no node has any global knowledge about the class identities of other nodes) preferentially grown networks, where different classes of nodes are characterized by different sets of local parameters used in the stochastic dynamics that all nodes in the network execute. We show that multiple scale-free structures, one within each class of nodes, and with tunable power-law exponents (as determined by the sets of parameters characterizing each class), emerge naturally in our model. Moreover, the coexistence of the scale-free structures of the different classes of nodes can be captured by succinct phase diagrams, which show a rich set of structures, including stable regions where different classes coexist in heavy-tailed (i.e., the exponent is between 2 and 3) and light-tailed (i.e., the exponent is greater than 3) states, and sharp phase transitions. The topology of the emergent networks is also shown to display a complex structure, akin to the distribution of different components of an alloyed material; e.g., nodes with a light-tailed scale-free structure get embedded to the outside of the network, and have most of their edges connected to nodes belonging to the class with a heavy-tailed distribution. Finally, we show how the dynamics formulated in this paper will serve as an essential part of ad hoc networking protocols, which can lead to the formation of robust and efficiently searchable networks [including, the well-known peer-to-peer networks] even under very dynamic conditions.
本文开发了一个框架,用于分析和设计由不同类型节点组成的动态网络,这些节点在一个共享环境中共存并相互作用。我们考虑自组织(即节点可以在不通知的情况下离开网络,且没有节点对其他节点的类型标识有任何全局了解)的优先增长网络,其中不同类型的节点由网络中所有节点执行的随机动力学中使用的不同局部参数集来表征。我们表明,在我们的模型中自然地出现了多个无标度结构,每个节点类中都有一个,并且具有可调的幂律指数(由表征每个类的参数集确定)。此外,不同类型节点的无标度结构的共存可以通过简洁的相图来描述,这些相图显示了丰富的结构集,包括不同类型在重尾(即指数在2到3之间)和轻尾(即指数大于3)状态下共存的稳定区域,以及尖锐的相变。还表明,出现的网络拓扑显示出一种复杂的结构,类似于合金材料不同成分的分布;例如,具有轻尾无标度结构的节点嵌入到网络外部,并且它们的大多数边连接到属于具有重尾分布类别的节点。最后,我们展示了本文中制定的动力学将如何作为自组织网络协议的重要组成部分,即使在非常动态的条件下,也能导致形成健壮且可高效搜索的网络[包括著名的对等网络]。