FastSNG:最快的社交网络数据集生成器

Binbin Wang, Chaokun Wang, Hao Feng
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引用次数: 1

摘要

随着社交媒体的飞速发展,大型社交网络越来越受欢迎。许多社会网络分析任务已经开发出来,可以在真实的大规模网络上进行。然而,实现底层大型网络的高昂成本,包括时间成本和数据隐私,使得很难评估分析算法在现实世界社交网络上的性能。在本文中,我们提出了一个名为FastSNG的工具,该工具根据用户定义的配置生成异构社交网络数据集,这些配置描述了预期社交网络的丰富特征,如社区结构、属性和节点度分布。FastSNG的生成算法采用度分布生成(D2G)模型,能够高效地生成web规模的社交网络数据集。最后,该工具为与一般用户的交互提供了用户友好且简洁的用户界面。
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FastSNG: The Fastest Social Network Dataset Generator
Large-scale social networks have become more and more popular with the rapid progress of social media. A number of social network analysis tasks have been developed to conduct on the real large-scale networks. However, the prohibitive cost of achieving the underlying large network, including time cost and data privacy, makes it hard to evaluate the performance of analysis algorithms on real-world social networks. In this paper, we present a tool called FastSNG, which generates heterogeneous social network datasets according to the user-defined configuration depicting the rich characteristics of the expected social network, such as community structures, attributes, and node degree distributions. Moreover, the generation algorithm of FastSNG adopts a degree distribution generation (D2G) model which is efficient to generate web-scale social network datasets. Finally, the tool provides user-friendly and succinct user interfaces for the interaction with general users.
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