计算机科学
复杂网络
复杂系统
噪音(视频)
信号重构
压缩传感
Lasso(编程语言)
多样性(控制论)
合成数据
航程(航空)
凸优化
人工智能
算法
理论计算机科学
信号处理
正多边形
数学
图像(数学)
电信
雷达
材料科学
几何学
复合材料
万维网
作者
Xiao Han,Zhesi Shen,Wen-Xu Wang,Zengru Di
标识
DOI:10.1103/physrevlett.114.028701
摘要
Reconstructing complex networks from measurable data is a fundamental problem for understanding and controlling collective dynamics of complex networked systems. However, a significant challenge arises when we attempt to decode structural information hidden in limited amounts of data accompanied by noise and in the presence of inaccessible nodes. Here, we develop a general framework for robust reconstruction of complex networks from sparse and noisy data. Specifically, we decompose the task of reconstructing the whole network into recovering local structures centered at each node. Thus, the natural sparsity of complex networks ensures a conversion from the local structure reconstruction into a sparse signal reconstruction problem that can be addressed by using the lasso, a convex optimization method. We apply our method to evolutionary games, transportation and communication processes taking place in a variety of model and real complex networks, finding that universal high reconstruction accuracy can be achieved from sparse data in spite of noise in time series and missing data of partial nodes. Our approach opens new routes to the network reconstruction problem and has potential applications in a wide range of fields.
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