Data-driven reconstruction of directed networks

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作者
Sabrina Hempel
Aneta Koseska
Zoran Nikoloski
机构
[1] Potsdam Institute for Climate Impact Research (PIK),Department of Physics
[2] Humboldt University of Berlin,undefined
[3] Interdisciplinary Center for Dynamics of Complex Systems,undefined
[4] University of Potsdam,undefined
[5] Max Planck Institute for Molecular Physiology,undefined
[6] Systems Biology and Mathematical Modeling Group,undefined
[7] Max Planck Institute for Molecular Plant Physiology,undefined
[8] Institute of Biochemistry and Biology,undefined
[9] University of Potsdam,undefined
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Statistical and Nonlinear Physics;
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摘要
We investigate the properties of a recently introduced asymmetric association measure, called inner composition alignment (IOTA), aimed at inferring regulatory links (couplings). We show that the measure can be used to determine the direction of coupling, detect superfluous links, and to account for autoregulation. In addition, the measure can be extended to infer the type of regulation (positive or negative). The capabilities of IOTA to correctly infer couplings together with their directionality are compared against Kendall’s rank correlation for time series of different lengths, particularly focussing on biological examples. We demonstrate that an extended version of the measure, bidirectional inner composition alignment (biIOTA), increases the accuracy of the network reconstruction for short time series. Finally, we discuss the applicability of the measure to infer couplings in chaotic systems.
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