社交网络的两阶段抽样算法

Zeinab S. Jalali, Alireza Rezvanian, M. Meybodi
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引用次数: 8

摘要

近年来,用于分析社交网络的数据变得非常庞大和具有限制性,因此可以从原始网络中选取合适的小样本网络作为分析目标。抽样社会网络是指从原始网络中抽取一个性质相似度高的小子图。由于抽样对社会网络分析的重要影响,在网络抽样领域已经提出了许多算法。本文提出了一种在线社交网络采样的两阶段算法。首先,我们的算法迭代地构造了若干组网络的最小生成树(MST)。在第二阶段,提出的算法对mst的顶点进行排序并合并形成采样网络。通过仿真实验验证了该算法在不同网络上的性能。将所得结果与相应算法在KS-test和ND-test方面进行了比较。从结果可以看出,该算法优于现有算法。
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A two-phase sampling algorithm for social networks
In recent years, the data used for analysis of social networks become very huge and restrictive so that it can be used an appropriate and small sampled network of original network for analysis goals. Sampling social network is referred to collect a small subgraph of original network with high property similarities between them. Due to important impact of sampling on the social network analyses, many algorithms have been proposed in the field of network sampling. In this paper, we propose a two-phase algorithm for sampling online social networks. At first phase, our algorithm iteratively constructs several set of minimum spanning trees (MST) of network. In the second phase, the proposed algorithm sorts vertices of MSTs and merge them to form a sampled network. Several simulation experiments are conducted to examine the performance of the proposed algorithm on different networks. The obtained results are compared with counterpart algorithms in terms of KS-test and ND-test. From the results, it can be observed that the proposed algorithm outperforms the existing algorithms.
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