论文标题
揭示多尺度网络纠缠对经验系统瓦解的影响
Unraveling the effects of multiscale network entanglement on disintegration of empirical systems
论文作者
论文摘要
复杂的系统是大量的实体集合,它们将自己组织成非平凡的结构,这些结构可以由网络代表。这种系统的关键紧急属性是针对随机失败或目标攻击的鲁棒性---即。网络在删除节点或链接下保持完整性的能力。在这里,我们介绍了通过多尺度镜头来研究网络鲁棒性的网络纠缠,该镜头由通过系统扩散信息所需的时间编码。我们的措施的基础在于最近提出的框架,显然是受量子统计物理学的启发,在该框架中,网络被解释为纠缠单元的集合,并且可以以吉布斯式的含量矩阵来表征。我们表明,在最小的时间尺度上,纠缠降至节点度,而在大尺度上,我们显示了其测量每个节点在网络完整性中扮演的作用的能力。在Meso尺度上,纠缠结合了结构以外的信息,例如系统的传输属性。作为应用程序,我们表明,经验社会,生物学和运输系统的网络拆除揭示了将网络瓦解的最佳时间尺度的存在。我们的结果为网络收缩过程及其对动态过程的影响的新型多尺度分析打开了大门。
Complex systems are large collections of entities that organize themselves into non-trivial structures that can be represented by networks. A key emergent property of such systems is robustness against random failures or targeted attacks ---i.e. the capacity of a network to maintain its integrity under removal of nodes or links. Here, we introduce network entanglement to study network robustness through a multi-scale lens, encoded by the time required to diffuse information through the system. Our measure's foundation lies upon a recently proposed framework, manifestly inspired by quantum statistical physics, where networks are interpreted as collections of entangled units and can be characterized by Gibbsian-like density matrices. We show that at the smallest temporal scales entanglement reduces to node degree, whereas at the large scale we show its ability to measure the role played by each node in network integrity. At the meso-scale, entanglement incorporates information beyond the structure, such as system's transport properties. As an application, we show that network dismantling of empirical social, biological and transportation systems unveils the existence of a optimal temporal scale driving the network to disintegration. Our results open the door for novel multi-scale analysis of network contraction process and its impact on dynamical processes.