在社交网络中寻找效应

Theodoros Lappas, Evimaria Terzi, D. Gunopulos, H. Mannila
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引用次数: 216

摘要

假设有一个网络(V,E),其中V中的一个节点子集是活动的。我们考虑在给定的信息传播模型下选择k个最能解释观察到的激活状态的活动节点的问题。我们称这些节点为效应器。我们正式定义了k效应器问题,并研究了不同类型图的k效应器问题的复杂度。我们证明了对于任意图,问题不仅是np困难的最优解,而且是np困难的近似。我们还证明了在一些特殊情况下,使用动态规划算法可以在多项式时间内最优地解决问题。据我们所知,这是第一个考虑网络中k效应问题的工作。我们使用DBLP合作关系图对我们的算法进行了实验评估,我们在其中搜索研究论文中出现的主题的效应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Finding effectors in social networks
Assume a network (V,E) where a subset of the nodes in V are active. We consider the problem of selecting a set of k active nodes that best explain the observed activation state, under a given information-propagation model. We call these nodes effectors. We formally define the k-Effectors problem and study its complexity for different types of graphs. We show that for arbitrary graphs the problem is not only NP-hard to solve optimally, but also NP-hard to approximate. We also show that, for some special cases, the problem can be solved optimally in polynomial time using a dynamic-programming algorithm. To the best of our knowledge, this is the first work to consider the k-Effectors problem in networks. We experimentally evaluate our algorithms using the DBLP co-authorship graph, where we search for effectors of topics that appear in research papers.
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