Hu Zhao-Long, Han Xiao, Lai Ying-Cheng, Wang Wen-Xu
School of Systems Science, Beijing Normal University, Beijing 100875, People's Republic of China.
School of Electrical, Computer and Energy Engineering, Arizona State University, Tempe, AZ 85287, USA.
R Soc Open Sci. 2017 Apr 12;4(4):170091. doi: 10.1098/rsos.170091. eCollection 2017 Apr.
Locating sources of diffusion and spreading from minimum data is a significant problem in network science with great applied values to the society. However, a general theoretical framework dealing with optimal source localization is lacking. Combining the controllability theory for complex networks and compressive sensing, we develop a framework with high efficiency and robustness for optimal source localization in arbitrary weighted networks with arbitrary distribution of sources. We offer a minimum output analysis to quantify the source locatability through a minimal number of messenger nodes that produce sufficient measurement for fully locating the sources. When the minimum messenger nodes are discerned, the problem of optimal source localization becomes one of sparse signal reconstruction, which can be solved using compressive sensing. Application of our framework to model and empirical networks demonstrates that sources in homogeneous and denser networks are more readily to be located. A surprising finding is that, for a connected undirected network with random link weights and weak noise, a single messenger node is sufficient for locating any number of sources. The framework deepens our understanding of the network source localization problem and offers efficient tools with broad applications.
从最少的数据中定位扩散源和传播源是网络科学中的一个重大问题,对社会具有重要的应用价值。然而,目前缺乏一个处理最优源定位的通用理论框架。结合复杂网络的可控性理论和压缩感知,我们开发了一个高效且稳健的框架,用于在源分布任意的任意加权网络中进行最优源定位。我们提供了一种最小输出分析,通过最少数量的信使节点来量化源的可定位性,这些信使节点产生足够的测量值以完全定位源。当识别出最小信使节点时,最优源定位问题就变成了一个稀疏信号重建问题,可以使用压缩感知来解决。我们的框架在模型网络和实证网络中的应用表明,在均匀且更密集的网络中的源更容易被定位。一个惊人的发现是,对于具有随机链路权重和弱噪声的连通无向网络,单个信使节点就足以定位任意数量的源。该框架加深了我们对网络源定位问题的理解,并提供了具有广泛应用的高效工具。