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APPROXIMATING BETWEENNESS CENTRALITY IN FULLY DYNAMIC NETWORKS

机译:完全动态网络中的密度中心近似

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Betweenness is a well-known centrality measure that ranks the nodes of a network according to their participation in shortest paths. Because exact computations are prohibitive in large networks, several approximation algorithms have been proposed. Besides that, recent years have seen the publication of dynamic algorithms for efficient recomputation of betweenness in networks that change over time. In this article, we propose the first betweenness centrality approximation algorithms with a provable guarantee on the maximum approximation error for dynamic networks. Several new intermediate algorithmic results contribute to the respective approximation algorithms: (i) new upper bounds on the vertex diameter, (ii) the first fully dynamic algorithm for updating an approximation of the vertex diameter in undirected graphs, and (iii) an algorithm with lower time complexity for updating single-source shortest paths in unweighted graphs after a batch of edge actions. Using approximation, our algorithms are the first to make in-memory computation of betweenness in dynamic networks with millions of edges feasible. Our experiments show that our algorithms can achieve substantial speedups compared to recomputation, up to several orders of magnitude. Moreover, the approximation accuracy is usually significantly better than the theoretical guarantee in terms of absolute error. More importantly, for reasonably small approximation error thresholds, the rank of nodes is well preserved, in particular for nodes with high betweenness.
机译:中间性是一种众所周知的集中度度量,它根据网络中节点在最短路径中的参与程度对其进行排名。由于在大型网络中无法进行精确的计算,因此提出了几种近似算法。除此之外,近年来已经看到了动态算法的发布,该算法可以有效地重新计算随时间变化的网络之间的中间性。在本文中,我们提出了第一种中间性中心度逼近算法,并为动态网络的最大逼近误差提供了可证明的保证。几种新的中间算法结果有助于各自的近似算法:(i)顶点直径的新上限;(ii)第一个用于更新无向图中顶点直径近似值的全动态算法;以及(iii)具有一批边缘动作后,用于更新未加权图中单源最短路径的时间复杂度较低。使用逼近,我们的算法是第一个使具有数百万条边的动态网络的内存间计算可行的算法。我们的实验表明,与重新计算相比,我们的算法可以实现相当大的速度提升,达到几个数量级。此外,在绝对误差方面,逼近精度通常明显优于理论保证。更重要的是,对于相当小的近似误差阈值,可以很好地保留节点的等级,特别是对于具有较高中间性的节点而言。

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