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Community-based influence maximization in attributed networks

机译:基于社区的影响归属网络中的影响最大化

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Influence Maximization, aiming at selecting a small set of seed users in a social network to maximize the spread of influence, has attracted considerable attention recently. Most existing influence maximization algorithms focus on pure networks, while in many real-world social networks, nodes are often associated with a rich set of attributes or features, aka attributed networks. Moreover, most of existing influence maximization methods suffer from the problems of high computational cost and no performance guarantee, as these methods heavily depend on analysis and exploitation of network structure. In this paper, we propose a new algorithm to solve community-based influence maximization problem in attributed networks, which consists of three steps: community detection, candidate community generation and seed node selection. Specifically, we first propose the candidate community generation process, which utilizes information of community structure as well as node attribute to narrow down possible community candidates. We then propose a model to predict influence strength between nodes in attributed network, which takes advantage of topology structure similarity and attribute similarity between nodes in addition to social interaction strength, thus improve the prediction accuracy comparing to the existing methods significantly. Finally, we select seed nodes by proposing the computation method of influence set, through which the marginal influence gain of nodes can be calculated directly, avoiding tens of thousands of Monte Carlo simulations and ultimately making the algorithm more efficient. Experiments on four real social network datasets demonstrate that our proposed algorithm outperforms state-of-the-art influence maximization algorithms in both influence spread and running time.
机译:影响最大化,旨在选择社交网络中的一小组种子用户来最大化影响的传播,最近引起了相当大的关注。最现有的影响最大化算法专注于纯网络,而在许多真实世界的社交网络中,节点通常与丰富的一组属性或特征相关联,AKA属性网络。此外,大多数现有的影响最大化方法遭受高计算成本和性能保证的问题,因为这些方法严重依赖于网络结构的分析和开发。在本文中,我们提出了一种新的算法来解决归属网络中基于社区的影响最大化问题,其中包括三个步骤:社区检测,候选社区生成和种子节点选择。具体而言,我们首先提出了候选社区生成过程,它利用社区结构的信息以及节点属性来缩小可能的社区候选者。然后,我们提出了一种模型来预测归属网络中节点之间的影响力,这在除社交交互强度之外,利用节点之间的拓扑结构相似性和属性相似性,从而提高了与现有方法的预测精度显着比较。最后,我们通过提出影响集的计算方法来选择种子节点,通过该计算方法可以直接计算节点的边缘影响增益,避免成千上万的蒙特卡罗模拟,并最终使算法更有效。四个真正的社交网络数据集的实验表明,我们所提出的算法优于最先进的影响,影响两种影响扩散和运行时间的最大化算法。

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