Andrew Audibert’s research while affiliated with University of Maine and other places

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Publications (1)


An Epidemiological Model of Internet Worms with Hierarchical Dispersal and Spatial Clustering of Hosts
  • Article

January 2017

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42 Reads

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8 Citations

Journal of Theoretical Biology

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Andrew Audibert

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Emma Strubell

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Isaac J. Michaud

Beginning in 2001, many instances of malicious software known as Internet worms have been using biological strategies such as hierarchical dispersal to seek out and spread to new susceptible hosts more efficiently. We measured the distribution of potentially susceptible hosts in the space of Internet addresses to determine their clustering. We have used the results to construct a full-size simulated Internet with 2³² hosts with mean and variance of susceptible hosts chosen to match our measurements at multiple spatial scales. Epidemiological simulations of outbreaks among the roughly susceptible hosts on this full-sized network show that local preference scanning greatly increases the chances for an infected host to locate and infect other susceptible hosts by a factor of as much as several hundred. However, once deploying this strategy, the overall success of a worm is relatively insensitive to the details of its dispersal strategy over a wide range of parameters. In addition, although using localized interactions may allow malicious software to spread more rapidly or to more hosts on average, it can also lead to increased variability in infection levels among replicate simulations. Using such dispersal strategies may therefore be a high risk, high reward strategy for the authors of such software.

Citations (1)


... Based on the study of references [1][2][3][4][5][6][7][8][9][10], virus propagation networks often present complex structural forms, such as grid topology and ring topology, which are difficult to detect when they spread among networks. ...

Reference:

Research on Virus Propagation Network Intrusion Detection Based on Graph Neural Network
An Epidemiological Model of Internet Worms with Hierarchical Dispersal and Spatial Clustering of Hosts
  • Citing Article
  • January 2017

Journal of Theoretical Biology