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首页> 外文期刊>Physica, A. Statistical mechanics and its applications >Reconstruction of network topology using status-time-series data
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Reconstruction of network topology using status-time-series data

机译:使用状态时序数据重建网络拓扑

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AbstractUncovering the heterogeneous connection pattern of a networked system from the available status-time-series (STS) data of a dynamical process on the network is of great interest in network science and known as a reverse engineering problem. Dynamical processes on a network are affected by the structure of the network. The dependency between the diffusion dynamics and structure of the network can be utilized to retrieve the connection pattern from the diffusion data. Information of the network structure can help to devise the control of dynamics on the network. In this paper, we consider the problem of network reconstruction from the available status-time-series (STS) data using matrix analysis. The proposed method of network reconstruction from the STS data is tested successfully under susceptible–infected–susceptible (SIS) diffusion dynamics on real-world and computer-generated benchmark networks. High accuracy and efficiency of the proposed reconstruction procedure from the status-time-series data define the novelty of the method. Our proposed method outperforms compressed sensing theory (CST) based method of network reconstruction using STS data. Further, the same procedure of network reconstruction is applied to the weighted networks. The ordering of the edges in the weighted networks is identified with high accuracy.Highlights
机译:<![cdata [ Abstract 从网络上的动态过程的可用状态 - 时序(STS)数据揭开网络系统的异构连接模式对网络科学的极大兴趣,称为逆向工程问题。网络上的动态过程受网络结构的影响。可以利用网络的扩散动态和结构之间的依赖性来检索来自扩散数据的连接模式。网络结构的信息可以有助于设计网络上的动态控制。在本文中,我们考虑使用矩阵分析从可用状态时序(STS)数据的网络重建问题。在现实世界和计算机生成的基准网络上的易感感染易感(SIS)扩散动态下,在STS数据中取得了从STS数据的网络重建方法。来自地位时序数据的建议重建过程的高精度和效率定义了该方法的新颖性。我们所提出的方法优于使用STS数据的基于压缩传感理论(CST)的网络重建方法。此外,对加权网络应用了相同的网络重建步骤。以高精度识别加权网络中边缘的排序。 < ce:section-title id =“d1e831”>突出显示

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