Efficient network immunization under limited knowledge
Abstract
Targeted immunization or attacks of large-scale networks has attracted significant attention by the scientific community. However, in real-world scenarios, knowledge and observations of the network may be limited thereby precluding a full assessment of the optimal nodes to immunize (or remove) in order to avoid epidemic spreading such as that of current COVID-19 epidemic. Here, we study a novel immunization strategy where only nodes are observed at a time and the most central between these nodes is immunized (or attacked). This process is continued repeatedly until fraction of nodes are immunized (or attacked). We develop an analytical framework for this approach and determine the critical percolation threshold and the size of the giant component for networks with arbitrary degree distributions . In the limit of we recover prior work on targeted attack, whereas for we recover the known case of random failure. Between these two extremes, we observe that as increases, increases quickly towards its optimal value under targeted immunization (attack) with complete information. In particular, we find a new scaling relationship between and as . For Scale-free (SF) networks, where , we find that has a transition from zero to non-zero when increases from to order of ( is the size of network). Thus, for SF networks, knowledge of order of nodes and immunizing them can reduce dramatically an epidemics.
Keywords
Cite
@article{arxiv.2004.00825,
title = {Efficient network immunization under limited knowledge},
author = {Yangyang Liu and Hillel Sanhedrai and GaoGao Dong and Louis M. Shekhtman and Fan Wang and Sergey V. Buldyrev and Shlomo Havlin},
journal= {arXiv preprint arXiv:2004.00825},
year = {2020}
}