Title
On the Evolution of Spreading Processes in Complex Networks.
Abstract
A common theme among the proposed models for network epidemics is the assumption that the propagating object, i.e., a virus or a piece of information, is transferred across the nodes without going through any modification or evolution. However, in real-life spreading processes, pathogens often evolve in response to changing environments and medical interventions and information is often modified by individuals before being forwarded. In this paper, we investigate the evolution of spreading processes on complex networks with the aim of i) revealing the role of evolution on the threshold, probability, and final size of epidemics; and ii) exploring the interplay between the structural properties of the network and the dynamics of evolution. In particular, we develop a mathematical theory that accurately predicts the epidemic threshold and the expected epidemic size as functions of the characteristics of the spreading process, the evolutionary dynamics of the pathogen, and the structure of the underlying contact network. In addition to the mathematical theory, we perform extensive simulations on random and real-world contact networks to verify our theory and reveal the significant shortcomings of the classical mathematical models that do not capture evolution. Our results reveal that the classical, single-type bond-percolation models may accurately predict the threshold and final size of epidemics, but their predictions on the probability of emergence are inaccurate on both random and real-world networks. This inaccuracy sheds the light on a fundamental disconnect between the classical bond-percolation models and real-life spreading processes that entail evolution. Finally, we consider the case when co-infection is possible and show that co-infection could lead the order of phase transition to change from second-order to first-order.
Year
Venue
Field
2018
arXiv: Physics and Society
Statistical physics,Mathematical theory,Complex network,Artificial intelligence,Evolutionary dynamics,Mathematical model,Mathematics,Machine learning
DocType
Volume
Citations 
Journal
abs/1810.04545
0
PageRank 
References 
Authors
0.34
0
4
Name
Order
Citations
PageRank
Rashad Eletreby1344.60
Yong Zhuang225413.88
Kathleen M. Carley32507270.10
Osman Yagan443043.65