Tyloo Melvyn
Theoretical Division, Los Alamos National Laboratory, Los Alamos, NM 87545, USA.
Center for Nonlinear Studies (CNLS), Los Alamos National Laboratory, Los Alamos, NM 87545, USA.
Entropy (Basel). 2023 Sep 15;25(9):1340. doi: 10.3390/e25091340.
Networks are widely used to model the interaction between individual dynamic systems. In many instances, the total number of units and interaction coupling are not fixed in time, and instead constantly evolve. In networks, this means that the number of nodes and edges both change over time. Various properties of coupled dynamic systems, such as their robustness against noise, essentially depend on the structure of the interaction network. Therefore, it is of considerable interest to predict how these properties are affected when the network grows as well as their relationship to the growth mechanism. Here, we focus on the time evolution of a network's Kirchhoff index. We derive closed-form expressions for its variation in various scenarios, including the addition of both edges and nodes. For the latter case, we investigate the evolution where single nodes with one or two edges connecting to existing nodes are added recursively to a network. In both cases, we derive the relations between the properties of the nodes to which the new node connects along with the global evolution of network robustness. In particular, we show how different scalings of the Kirchhoff index can be obtained as a function of the number of nodes. We illustrate and confirm this theory via numerical simulations of randomly growing networks.
网络被广泛用于对个体动态系统之间的相互作用进行建模。在许多情况下,单元的总数和相互作用耦合并非随时间固定不变,而是不断演化。在网络中,这意味着节点和边的数量都会随时间变化。耦合动态系统的各种属性,比如它们对噪声的鲁棒性,本质上取决于相互作用网络的结构。因此,预测当网络增长时这些属性如何受到影响以及它们与增长机制的关系具有相当大的研究价值。在这里,我们关注网络的基尔霍夫指数的时间演化。我们推导了其在各种情形下变化的闭式表达式,包括边和节点的添加。对于后一种情况,我们研究了将与现有节点连接着一条或两条边的单个节点递归添加到网络中的演化过程。在这两种情况下,我们推导了新节点所连接的节点的属性与网络鲁棒性全局演化之间的关系。特别地,我们展示了如何根据节点数量获得基尔霍夫指数的不同缩放比例。我们通过随机增长网络的数值模拟来说明并证实这一理论。