Containing Viral Spread on Sparse Random Graphs: Bounds, Algorithms, and Experiments

Q3 Mathematics Internet Mathematics Pub Date : 2013-10-02 DOI:10.1080/15427951.2013.798600
M. Bradonjic, Michael Molloy, Guanhua Yan
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引用次数: 2

Abstract

Viral spread on large graphs has many real-life applications such as malware propagation in computer networks and rumor (or misinformation) spread in Twitter-like online social networks. Although viral spread on large graphs has been intensively analyzed on classical models such as Susceptible–Infectious–Recovered, there still exits a deficit of effective methods in practice to contain epidemic spread once it passes a critical threshold. Against this backdrop, we explore methods of containing viral spread in large networks with the focus on sparse random networks. The viral containment strategy is to partition a large network into small components and then to ensure that all messages delivered across different components are free of infection. With such a defense mechanism in place, an epidemic spread starting from any node is limited to only those nodes belonging to the same component as the initial infection node. We establish both lower and upper bounds on the costs of inspecting intercomponent messages. We further propose heuristic-based approaches to partitioning large input graphs into small components. Finally, we study the performance of our proposed algorithms under different network topologies and different edge-weight models.
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在稀疏随机图上包含病毒传播:界限、算法和实验
在大图形上的病毒式传播有许多现实应用,例如计算机网络中的恶意软件传播和类似twitter的在线社交网络中的谣言(或错误信息)传播。尽管在诸如易感-感染-恢复等经典模型上对大图上的病毒传播进行了深入的分析,但在实践中仍然缺乏有效的方法来控制一旦超过临界阈值的流行病传播。在此背景下,我们探索了在大型网络中控制病毒传播的方法,重点是稀疏随机网络。病毒遏制策略是将大型网络划分为小组件,然后确保跨不同组件传递的所有消息都不受感染。有了这样的防御机制,从任何节点开始的流行病传播仅限于与初始感染节点属于同一组件的节点。我们建立了检查组件间消息成本的下界和上界。我们进一步提出了基于启发式的方法来将大的输入图划分为小的组件。最后,我们研究了算法在不同网络拓扑和不同边权模型下的性能。
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Internet Mathematics
Internet Mathematics Mathematics-Applied Mathematics
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