作者
Tianyi Wang, Yang Chen, Zengbin Zhang, Tianyin Xu, Long Jin, Pan Hui, Beixing Deng, Xing Li
发表日期
2011/6/20
研讨会论文
2011 31st international conference on distributed computing systems workshops
页码范围
123-128
出版商
IEEE
简介
Being able to keep the graph scale small while capturing the properties of the original social graph, graph sampling provides an efficient, yet inexpensive solution for social network analysis. The challenge is how to create a small, but representative sample out of the massive social graph with millions or even billions of nodes. Several sampling algorithms have been proposed in previous studies, but there lacks fair evaluation and comparison among them. In this paper, we analyze the state-of art graph sampling algorithms and evaluate their performance on some widely recognized graph properties on directed graphs using large-scale social network datasets. We evaluate not only the commonly used node degree distribution, but also clustering coefficient, which quantifies how well connected are the neighbors of a node in a graph. Through the comparison we have found that none of the algorithms is able to …
引用总数
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学术搜索中的文章
T Wang, Y Chen, Z Zhang, T Xu, L Jin, P Hui, B Deng… - 2011 31st international conference on distributed …, 2011