论文标题
通过对网络信息扩散的光谱复杂性的影响来排名边缘
Ranking Edges by their Impact on the Spectral Complexity of Information Diffusion over Networks
论文作者
论文摘要
尽管现在有多种方法可以量化网络的哪些部分或子系统最重要,但仍缺乏与信息流的复杂性相关的中心度度量,并且直接来自熵措施。在这里,我们根据每个边缘的去除方式如何改变系统的von Neumann熵(VNE),介绍了边缘的排名,这是一个光谱 - 内部措施,已从量子信息理论进行了调整,以量化信息动力学与网络相对于网络的复杂性。我们表明,此类排名的直接计算是大型网络的计算效率低下(或不可行的):为了克服这一局限性,我们采用光谱扰动理论来估计vne扰动并得出一种近似边缘级算法,该算法准确且快速计算,将缩放为$ \ MATHCAL {O}(O}(N)$。 Focusing on a form of VNE that is associated with a transport operator $e^{-β{ L}}$, where ${ L}$ is a graph Laplacian matrix and $β>0$ is a diffusion timescale parameter, we apply this approach to diverse applications including a network encoding polarized voting patterns of the 117th U.S. Senate, a multimodal transportation system including roads and metro lines in London,以及编码相关的人脑活动的多重大脑网络。我们的实验强调了被认为对信息扩散复杂性最重要的边缘可能会发生巨大变化,因为人们认为短,中间和长时间标准$β$用于扩散。
Despite the numerous ways now available to quantify which parts or subsystems of a network are most important, there remains a lack of centrality measures that are related to the complexity of information flows and are derived directly from entropy measures. Here, we introduce a ranking of edges based on how each edge's removal would change a system's von Neumann entropy (VNE), which is a spectral-entropy measure that has been adapted from quantum information theory to quantify the complexity of information dynamics over networks. We show that a direct calculation of such rankings is computationally inefficient (or unfeasible) for large networks: e.g.\ the scaling is $\mathcal{O}(N^3)$ per edge for networks with $N$ nodes. To overcome this limitation, we employ spectral perturbation theory to estimate VNE perturbations and derive an approximate edge-ranking algorithm that is accurate and fast to compute, scaling as $\mathcal{O}(N)$ per edge. Focusing on a form of VNE that is associated with a transport operator $e^{-β{ L}}$, where ${ L}$ is a graph Laplacian matrix and $β>0$ is a diffusion timescale parameter, we apply this approach to diverse applications including a network encoding polarized voting patterns of the 117th U.S. Senate, a multimodal transportation system including roads and metro lines in London, and a multiplex brain network encoding correlated human brain activity. Our experiments highlight situations where the edges that are considered to be most important for information diffusion complexity can dramatically change as one considers short, intermediate and long timescales $β$ for diffusion.