Description

Our ability to uncover complex network structure and dynamics from data is fundamental to understanding and controlling collective dynamics in complex systems. Despite recent progress in this area, reconstructing networks with stochastic dynamical processes from limited time series remains to

Our ability to uncover complex network structure and dynamics from data is fundamental to understanding and controlling collective dynamics in complex systems. Despite recent progress in this area, reconstructing networks with stochastic dynamical processes from limited time series remains to be an outstanding problem. Here we develop a framework based on compressed sensing to reconstruct complex networks on which stochastic spreading dynamics take place. We apply the methodology to a large number of model and real networks, finding that a full reconstruction of inhomogeneous interactions can be achieved from small amounts of polarized (binary) data, a virtue of compressed sensing. Further, we demonstrate that a hidden source that triggers the spreading process but is externally inaccessible can be ascertained and located with high confidence in the absence of direct routes of propagation from it. Our approach thus establishes a paradigm for tracing and controlling epidemic invasion and information diffusion in complex networked systems.

Reuse Permissions
  • Downloads
    PDF (754.7 KB)

    Details

    Title
    • Reconstructing Propagation Networks With Natural Diversity and Identifying Hidden Sources
    Contributors
    Date Created
    2014-07-01
    Resource Type
  • Text
  • Collections this item is in
    Identifier
    • Digital object identifier: 10.1038/ncomms5323
    • Identifier Type
      International standard serial number
      Identifier Value
      2041-1723

    Citation and reuse

    Cite this item

    This is a suggested citation. Consult the appropriate style guide for specific citation guidelines.

    Shen, Z. et al. Reconstructing propagation networks with natural diversity and identifying hidden sources. Nat. Commun. 5:4323 http://dx.doi.org/10.1038/ncomms5323 (2014).

    Machine-readable links