DSCRSIOCPENov 9, 2013

Adaptive Epidemic Dynamics in Networks: Thresholds and Control

arXiv:1311.2180v246 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of computer virus epidemic control for network security, introducing adaptive perspectives not covered by traditional biological models, though it is incremental in extending existing SIS frameworks.

The paper tackles the problem of modeling adaptive defense against computer virus spreading in arbitrary networks, presenting a non-homogeneous SIS model with time-varying parameters and deriving sufficient conditions for virus die-out in semi-adaptive defense and adaptive control strategies for containment in fully-adaptive defense.

Theoretical modeling of computer virus/worm epidemic dynamics is an important problem that has attracted many studies. However, most existing models are adapted from biological epidemic ones. Although biological epidemic models can certainly be adapted to capture some computer virus spreading scenarios (especially when the so-called homogeneity assumption holds), the problem of computer virus spreading is not well understood because it has many important perspectives that are not necessarily accommodated in the biological epidemic models. In this paper we initiate the study of such a perspective, namely that of adaptive defense against epidemic spreading in arbitrary networks. More specifically, we investigate a non-homogeneous Susceptible-Infectious-Susceptible (SIS) model where the model parameters may vary with respect to time. In particular, we focus on two scenarios we call semi-adaptive defense and fully-adaptive} defense, which accommodate implicit and explicit dependency relationships between the model parameters, respectively. In the semi-adaptive defense scenario, the model's input parameters are given; the defense is semi-adaptive because the adjustment is implicitly dependent upon the outcome of virus spreading. For this scenario, we present a set of sufficient conditions (some are more general or succinct than others) under which the virus spreading will die out; such sufficient conditions are also known as epidemic thresholds in the literature. In the fully-adaptive defense scenario, some input parameters are not known (i.e., the aforementioned sufficient conditions are not applicable) but the defender can observe the outcome of virus spreading. For this scenario, we present adaptive control strategies under which the virus spreading will die out or will be contained to a desired level.

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