论文标题

通过扰动理论定位网络的特征希尔德

Locating the eigenshield of a network via perturbation theory

论文作者

Zhou, Ming-Yang, Mariani, Manuel Sebastian, Liao, Hao, Mao, Rui, Zhang, Yi-Cheng

论文摘要

复杂网络的功能通常由一小组重要节点确定。找到最佳的重要节点(特征性节点)对于网络抵抗谣言传播和级联故障至关重要,这使其成为网络科学中的基本问题之一。这个问题是具有挑战性的,因为它需要最大程度地提高节点在集合中的影响,同时最大程度地减少集合节点之间的冗余。但是,以前的研究很少研究冗余机制。 Here we introduce the matrix perturbation framework to find a small ``eigenshield" set of nodes that, when removed, lead to the largest drop in the network's spectral radius. We show that finding the ``eigenshield" nodes can be translated into the optimization of an objective function that simultaneously accounts for the individual influence of each node and redundancy between different nodes. 我们从分析上量化了影响冗余的影响,这解释了为什么一个重要的节点可能在``eigenshield''节点集中起着微不足道的作用。广泛的实验会影响最大化的问题,范围从网络拆卸到扩散的最大化,从而表明,特征范围的机制可能超出了perfers of the the the the the the the the the the the-afters的范围。复杂网络中重要节点功能的核心。

The functions of complex networks are usually determined by a small set of vital nodes. Finding the best set of vital nodes (eigenshield nodes) is critical to the network's robustness against rumor spreading and cascading failures, which makes it one of the fundamental problems in network science. The problem is challenging as it requires to maximize the influence of nodes in the set while simultaneously minimizing the redundancies between the set's nodes. However, the redundancy mechanism is rarely investigated by previous studies. Here we introduce the matrix perturbation framework to find a small ``eigenshield" set of nodes that, when removed, lead to the largest drop in the network's spectral radius. We show that finding the ``eigenshield" nodes can be translated into the optimization of an objective function that simultaneously accounts for the individual influence of each node and redundancy between different nodes. We analytically quantify the influence redundancy that explains why an important node might play an insignificant role in the ``eigenshield" node set. Extensive experiments under diverse influence maximization problems, ranging from network dismantling to spreading maximization, demonstrate that the eigenshield detection tends to significantly outperforms state-of-the-art methods across most problems. Our findings shed light on the mechanisms that may lie at the core of the function of vital nodes in complex network.

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