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Approximating Betweenness Centrality in Large Evolving Networks

机译:大量不断发展的网络中的度量中心地位近似

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Betweenness centrality ranks the importance of nodes by their participation in all shortest paths of the network. Therefore computing exact betweenness values is impractical in large networks. For static networks, approximation based on randomly sampled paths has been shown to be significantly faster in practice. However, for dynamic networks, no approximation algorithm for betweenness centrality is known that improves on static recomputation. We address this deficit by proposing two incremental approximation algorithms (for weighted and unweighted connected graphs) which provide a provable guarantee on the absolute approximation error. Processing batches of edge insertions, our algorithms yield significant speedups up to a factor of 104 compared to restarting the approximation. This is enabled by investing memory to store and efficiently update shortest paths. As a building block, we also propose an asymptotically faster algorithm for updating the SSSP problem in unweighted graphs. Our experimental study shows that our algorithms are the first to make in-memory computation of a betweenness ranking practical for million-edge semi-dynamic networks. Moreover, our results show that the accuracy is even better than the theoretical guarantees in terms of absolute errors and the rank of nodes is well preserved, in particular for those with high betweenness.
机译:中心性之间的中心性在参与网络的所有最短路径中排名节点的重要性。因此,在大型网络中计算精确地之间值是不切实际的。对于静态网络,在实践中已经显示了基于随机采样路径的近似值明显更快。然而,对于动态网络,已知对中心性之间的近似算法是有所提高了静态重新计算的。我们通过提出两个增量近似算法(对于加权和未加权的连接图)来解决这一缺陷,该近似值为绝对近似误差提供了可提供的保证。处理批次的边缘插入,与重新启动近似相比,我们的算法产生显着的加速至104倍。这是通过投资存储器来存储和有效更新最短路径的启用。作为构建块,我们还提出了一种渐近速度更快的算法,用于更新未加权图中的SSSP问题。我们的实验研究表明,我们的算法是第一个在百万边缘半动态网络中排名的内存计算。此外,我们的结果表明,准确性甚至比绝对误差方面的理论保证更好,节点等级保存完全,特别是对于高度之间的人。

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