Influence Maximization Under Partially Observable Environments

Saeid Ghafouri, S. H. Khasteh
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引用次数: 1

Abstract

The problem of influence maximization is a classic subject to study in the field of network science. It is about finding the top-k important individuals in a network for message dissemination under a particular diffusion model. Each year a number of new research papers are published concerning the same issue. However, most of these methods can only operate in situations where the whole graph is visible to the algorithm which is an unrealistic assumption in many cases. There are many cases where the induced network model of a natural phenomenon is associated with missing links. Discarding these links will lead to serious drawbacks in the result. In this work, we have extended the current state of the art influence maximization algorithms by adding a link prediction heuristic step prior to the actual run of the algorithm. For the purpose of link prediction, we have used exponential random graph models also known as ERGM due to their probabilistic link prediction capabilities. We have shown that this heuristic can significantly improve the effectiveness of influence maximization algorithms and in a diffusion scenario we can have a larger number of infected nodes using the seed nodes of the influence maximization algorithm.
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部分可观察环境下的影响最大化
影响最大化问题是网络科学领域的一个经典研究课题。它是在一个特定的扩散模型下,在一个网络中找到最重要的k个个体进行信息传播。每年都有许多关于同一问题的新研究论文发表。然而,大多数这些方法只能在整个图对算法可见的情况下运行,这在许多情况下是一个不切实际的假设。在许多情况下,自然现象的诱导网络模型与缺失的环节有关。放弃这些环节将导致结果的严重缺陷。在这项工作中,我们通过在算法实际运行之前添加链接预测启发式步骤,扩展了当前最先进的影响最大化算法。为了进行链路预测,我们使用了指数随机图模型(也称为ERGM),因为它们具有概率链路预测能力。我们已经证明,这种启发式方法可以显著提高影响力最大化算法的有效性,并且在扩散场景中,我们可以使用影响力最大化算法的种子节点拥有更多的感染节点。
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