• Title of article

    Markovian dynamics on complex reaction networks

  • Author/Authors

    Goutsias، نويسنده , , David J. and Jenkinson، نويسنده , , G.، نويسنده ,

  • Pages
    66
  • From page
    199
  • To page
    264
  • Abstract
    Complex networks, comprised of individual elements that interact with each other through reaction channels, are ubiquitous across many scientific and engineering disciplines. Examples include biochemical, pharmacokinetic, epidemiological, ecological, social, neural, and multi-agent networks. A common approach to modeling such networks is by a master equation that governs the dynamic evolution of the joint probability mass function of the underlying population process and naturally leads to Markovian dynamics for such process. Due however to the nonlinear nature of most reactions and the large size of the underlying state-spaces, computation and analysis of the resulting stochastic population dynamics is a difficult task. This review article provides a coherent and comprehensive coverage of recently developed approaches and methods to tackle this problem. After reviewing a general framework for modeling Markovian reaction networks and giving specific examples, the authors present numerical and computational techniques capable of evaluating or approximating the solution of the master equation, discuss a recently developed approach for studying the stationary behavior of Markovian reaction networks using a potential energy landscape perspective, and provide an introduction to the emerging theory of thermodynamic analysis of such networks. Three representative problems of opinion formation, transcription regulation, and neural network dynamics are used as illustrative examples.
  • Keywords
    complex networks , Markovian dynamics , master equation , Stochastic nonlinear dynamics , Potential energy landscape , Thermodynamic analysis
  • Journal title
    Astroparticle Physics
  • Record number

    2004350