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DiffuGreedy: An Influence Maximization Algorithm Based on Diffusion Cascades

机译:DiffuGreedy:基于扩散级联的影响最大化算法

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Finding a set of nodes that maximizes the spread in a network, known as the influence maximization problem, has been addressed from multiple angles throughout the literature. Traditional solutions focus on the algorithmic aspect of the problem and are based solely on static networks. However, with the emergence of several complementary data, such as the network's temporal changes and the diffusion cascades taking place over it, novel methods have been proposed with promising results. Here, we introduce a simple yet effective algorithm that combines the algorithmic methodology with the diffusion cascades. We compare it with four different prevalent influence maximization approaches, on a large scale Chinese microblogging dataset. More specifically, for comparison, we employ methods that derive the seed set using the static network, the temporal network, the diffusion cascades, and their combination. A set of diffusion cascades from the latter part of the dataset is set aside for evaluation. Our method outperforms the rest in both quality of the seed set and computational efficiency.
机译:在整个文献中,已经从多个角度解决了寻找一组使网络中的传播最大化的节点的问题,这被称为影响最大化问题。传统解决方案侧重于问题的算法方面,并且仅基于静态网络。但是,随着一些补充数据的出现,例如网络的时间变化和在其上发生的扩散级联,提出了具有希望的结果的新颖方法。在这里,我们介绍了一种简单而有效的算法,该算法将算法方法与扩散级联相结合。在大型中文微博数据集上,我们将其与四种不同的普遍影响最大化方法进行了比较。更具体地说,为了进行比较,我们采用了使用静态网络,时间网络,扩散级联及其组合来导出种子集的方法。保留了来自数据集后半部分的一组扩散级联以进行评估。我们的方法在种子集质量和计算效率上都胜过其他方法。

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