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A Diffusion Model for Maximizing Influence Spread in Large Networks

机译:最大化网络中影响力扩散的扩散模型

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Influence spread is an important phenomenon that occurs in many social networks. Influence maximization is the corresponding problem of finding the most influential nodes in these networks. In this paper, we present a new influence diffusion model, based on pairwise factor graphs, that captures dependencies and directions of influence among neighboring nodes. We use an augmented belief propagation algorithm to efficiently compute influence spread on this model so that the direction of influence is preserved. Due to its simplicity, the model can be used on large graphs with high-degree nodes, making the influence maximization problem practical on large, real-world graphs. Using large Flixster and Epinions datasets, we provide experimental results showing that our model predictions match well with ground-truth influence spreads, far better than other techniques. Furthermore, we show that the influential nodes identified by our model achieve significantly higher influence spread compared to other popular models. The model parameters can easily be learned from basic, readily available training data. In the absence of training, our approach can still be used to identify influential seed nodes.
机译:影响力传播是许多社交网络中发生的重要现象。影响最大化是在这些网络中找到最有影响力的节点的相应问题。在本文中,我们提出了一种基于成对因素图的新影响扩散模型,该模型捕获了相邻节点之间的依赖性和影响方向。我们使用增强的信念传播算法来有效地计算此模型上的影响散布,从而保留影响的方向。由于其简单性,该模型可用于具有高阶节点的大型图,从而使影响最大化问题适用于大型,真实世界的图。使用大型Flixster和Epinions数据集,我们提供的实验结果表明,我们的模型预测与地面真相影响扩散非常匹配,远胜于其他技术。此外,我们表明,与其他流行模型相比,我们的模型确定的有影响力的节点实现了显着更高的影响力扩散。可以从基本的,容易获得的训练数据中轻松学习模型参数。在没有训练的情况下,我们的方法仍然可以用来确定有影响力的种子节点。

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