4.6 Article

Spreading dynamics on networks: the role of burstiness, topology and non-stationarity

Journal

NEW JOURNAL OF PHYSICS
Volume 16, Issue -, Pages -

Publisher

IOP Publishing Ltd
DOI: 10.1088/1367-2630/16/7/073037

Keywords

complex networks; spreading phenomena; bursty time series; non-stationary processes; topological bottlenecks

Funding

  1. project FuturICT.hu [TAMOP-4.2.2.C-11/1/KONV-2012-0013]
  2. DATASIM FP7 project [27833]
  3. FiDiPro program by TEKES of Finland [125587]

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Spreading on networks is influenced by a number of factors, including different parts of the inter-event time distribution (IETD), the topology of the network and non-stationarity. In order to understand the role of these factors we study the SI model on temporal networks with different aggregated topologies and different IETDs. Based on analytic calculations and numerical simulations, we show that if the stationary bursty process is governed by power-law IETD, the spreading can be slowed down or accelerated as compared to a Poisson process; the speed is determined by the short time behaviour, which in our model is controlled by the exponent. We demonstrate that finite, so called 'locally tree-like' networks, like the Barabasi-Albert networks behave very differently from real tree graphs if the IETD is strongly fat-tailed, as the lack or presence of rare alternative paths modifies the spreading. A further important result is that the non-stationarity of the dynamics has a significant effect on the spreading speed for strongly fattailed power-law IETDs, thus bursty processes characterized by small power-law exponents can cause slow spreading in the stationary state but also very rapid spreading, with this heavily dependent on the age of the processes.

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