Visible to the public Designing virus-resistant networks: A game-formation approach

TitleDesigning virus-resistant networks: A game-formation approach
Publication TypeConference Paper
Year of Publication2015
AuthorsTrajanovski, S., Kuipers, F. A., Hayel, Y., Altman, E., Mieghem, P. Van
Conference Name2015 54th IEEE Conference on Decision and Control (CDC)
PublisherIEEE
ISBN Number978-1-4799-7886-1
Keywordsautonomous system, computer network security, computer viruses, decentralized fashion, game theory, game-formation approach, Games, global optimum, Internet, Nash equilibria, Nash equilibrium, Network topology, optimal network topology, Peer-to-peer computing, price of anarchy, pubcrawl170107, pubcrawl170108, security, Stability analysis, telecommunication network topology, virus resiliency, virus security, virus-resistant network design, Viruses (medical), worst-case Nash equilibrium
Abstract

Forming, in a decentralized fashion, an optimal network topology while balancing multiple, possibly conflicting objectives like cost, high performance, security and resiliency to viruses is a challenging endeavor. In this paper, we take a game-formation approach to network design where each player, for instance an autonomous system in the Internet, aims to collectively minimize the cost of installing links, of protecting against viruses, and of assuring connectivity. In the game, minimizing virus risk as well as connectivity costs results in sparse graphs. We show that the Nash Equilibria are trees that, according to the Price of Anarchy (PoA), are close to the global optimum, while the worst-case Nash Equilibrium and the global optimum may significantly differ for small infection rate and link installation cost. Moreover, the types of trees, in both the Nash Equilibria and the optimal solution, depend on the virus infection rate, which provides new insights into how viruses spread: for high infection rate t, the path graph is the worst- and the star graph is the best-case Nash Equilibrium. However, for small and intermediate values of t, trees different from the path and star graphs may be optimal.

URLhttp://ieeexplore.ieee.org/stamp/stamp.jsp?tp=&arnumber=7402216&isnumber=7402066
DOI10.1109/CDC.2015.7402216
Citation Keytrajanovski_designing_2015