线性阈值模型下社会意识网络中的信息传播

S. Venkatramanan, Anurag Kumar
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引用次数: 5

摘要

在信息传播背景下,我们提供了关于Kempe等人在[1]中引入的线性阈值社会网络模型下信息传播或影响的新的分析结果。种子程序首先向一组初始节点提供消息,并对最终接收消息的节点数量最大化感兴趣。节点转发消息的决定取决于它从中接收消息的节点集。在线性阈值模型下,转发信息的决定取决于接收数据包的节点的总影响与自己的影响阈值的比较。对于一般网络,作为初始节点集的函数,我们导出了最终接收消息的预期节点数的解析表达式。我们证明了这个问题可以在马尔可夫链的框架中进行重构。然后,我们使用解析表达式来深入了解一些简单的网络拓扑,如星形图、环状图、网状图和无环图上的信息传播。我们还推导了上述网络的最优初始集,并提示了选择良好初始集的一般启发式方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Information dissemination in socially aware networks under the linear threshold model
We provide new analytical results concerning the spread of information or influence under the linear threshold social network model introduced by Kempe et al. in [1], in the information dissemination context. The seeder starts by providing the message to a set of initial nodes and is interested in maximizing the number of nodes that will receive the message ultimately. A node's decision to forward the message depends on the set of nodes from which it has received the message. Under the linear threshold model, the decision to forward the information depends on the comparison of the total influence of the nodes from which a node has received the packet with its own threshold of influence. We derive analytical expressions for the expected number of nodes that receive the message ultimately, as a function of the initial set of nodes, for a generic network. We show that the problem can be recast in the framework of Markov chains. We then use the analytical expression to gain insights into information dissemination in some simple network topologies such as the star, ring, mesh and on acyclic graphs. We also derive the optimal initial set in the above networks, and also hint at general heuristics for picking a good initial set.
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