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Learning Parameters for Balanced Index Influence Maximization

机译:用于平衡索引的学习参数影响最大化

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Influence maximization is the task of finding the smallest set of nodes whose activation in a social network can trigger an activation cascade that reaches the targeted network coverage, where threshold rules determine the outcome of influence. This problem is NP-hard and it has generated a significant amount of recent research on finding efficient heuristics. We focus on a Balance Index algorithm that relies on three parameters to tune its performance to the given network structure. We propose using a supervised machine-learning approach for such tuning. We select the most influential graph features for the parameter tuning. Then, using random-walk-based graph-sampling, we create small snapshots from the given synthetic and large-scale real-world networks. Using exhaustive search, we find for these snapshots the high accuracy values of BI parameters to use as a ground truth. Then, we train our machine-learning model on the snapshots and apply this model to the real-word network to find the best BI parameters. We apply these parameters to the sampled real-world network to measure the quality of the sets of initiators found this way. We use various real-world networks to validate our approach against other heuristic.
机译:影响最大化是找到在社交网络中激活的最小节点组的任务可以触发到达目标网络覆盖的激活级联,其中阈值规则决定了影响的结果。这个问题是NP-Hard,它已经产生了大量关于寻找高效启发式的研究。我们专注于依赖于三个参数的平衡索引算法,以将其性能调谐到给定的网络结构。我们建议使用监督的机器学习方法进行这种调整。我们为参数调整选择最有影响力的图形功能。然后,使用基于随机散步的图形抽样,我们从给定的合成和大规模的真实网络中创建小快照。使用详尽的搜索,我们发现这些快照的BI参数的高精度值用作地面真理。然后,我们在快照上培训我们的机器学习模型,并将此模型应用于实际网络网络以查找最佳BI参数。我们将这些参数应用于采样的真实网络,以测量以这种方式找到的启动器集的质量。我们使用各种现实网络验证我们对其他启发式的方法。

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