High-precision shortest distance estimation for large-scale social networks

Jie Cheng, Yangyang Zhang, Qiang Ye, Hongwei Du
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引用次数: 5

Abstract

Over the past decades, many large-scale social network systems, such as Facebook and Twitter, have been deployed in different countries. How to efficiently analyze the topological characteristics of large-scale social networks has been a challenging problem in the research community. One of the critical topological characteristics is the shortest distance between two nodes in a network. The existing shortest distance algorithms, such as Breadth First Search (BFS), work well with small networks. For a network with billions of nodes, calculating the pairwise shortest distances with these algorithms requires an overlong period of time. In this paper, we present a high-precision ShOrtest Distance Approximation (SODA) scheme, which utilizes a small set of pre-calculated distances to estimate the shortest distance between each pair of nodes in large-scale social networks. Compared with the existing shortest distance estimation schemes for social networks, SODA leads to high estimation accuracy since it utilizes a novel optimization method, Robust Discrete Matrix Decomposition (RDMD), to eliminate the impact of significant errors/outliers and generate the coordinates of the nodes in a network simultaneously. In addition, SODA differentiates the asymmetric distances in directed graphs. Consequently, SODA works well with both directed and undirected social networks. Finally, SODA only involves convex optimization. Therefore, SODA is highly competitive in terms of computation complexity. Our experimental results indicate that SODA outperforms the state-of-the-art shortest distance estimation schemes in terms of estimation accuracy and running time.
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大规模社交网络高精度最短距离估计
在过去的几十年里,许多大型社交网络系统,如Facebook和Twitter,已经在不同的国家部署。如何有效地分析大规模社交网络的拓扑特征一直是研究领域的难题。一个关键的拓扑特征是网络中两个节点之间的最短距离。现有的最短距离算法,如广度优先搜索(BFS),适用于小型网络。对于一个拥有数十亿节点的网络,用这些算法计算成对最短距离需要很长时间。在本文中,我们提出了一种高精度的最短距离近似(SODA)方案,该方案利用一小组预先计算的距离来估计大规模社交网络中每对节点之间的最短距离。与现有的社交网络最短距离估计方案相比,SODA采用了一种新颖的优化方法稳健离散矩阵分解(Robust Discrete Matrix Decomposition, RDMD),消除了显著误差/异常值的影响,同时生成了网络中节点的坐标,从而提高了估计精度。此外,SODA还可以区分有向图中的不对称距离。因此,SODA在有向和无向社交网络中都能很好地工作。最后,SODA只涉及凸优化。因此,SODA在计算复杂度方面具有很强的竞争力。我们的实验结果表明,SODA在估计精度和运行时间方面优于最先进的最短距离估计方案。
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