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NYNN: An in-memory distributed storage system for massive graph analysis

机译:Nynn:用于大规模图分析的内存分布式存储系统

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With the development of social networks, methodologies and approaches of computational intelligence are used for data mining and knowledge discovery regarding massive graphs generated by social networks. How to efficiently organize massive graphs in order to improve the performance of massive graph analysis is an important issue. The traditional graph data management systems are designed for general purpose but lack sufficient consideration on graph characteristics and access methods. As a result, the early systems are less suitable in scenarios of massive graph analysis. In order to solve the above problem, this paper proposes an in-memory organization system for graph data generated by social networks, and the system gives special consideration on update, random access and sparsity of massive graphs. Finally, experiments conducted on real-world social network data sets have shown that the proposed methods are superior to the industry's advanced graph storage methods.
机译:随着社交网络的发展,计算智能的方法和方法用于数据挖掘和关于社交网络生成的大规模图形的知识发现。如何有效地组织大规模图表,以提高大规模图形分析的性能是一个重要问题。传统的图形数据管理系统专为通用而设计,但在图表特征和访问方法上缺乏足够的考虑。结果,早期系统在大规模图分析的情况下不太适合。为了解决上述问题,本文提出了一个用于由社交网络生成的图表数据的内存组织系统,并且系统提供了关于大规模图形的更新,随机访问和稀疏性的特殊考虑。最后,在现实世界的社交网络数据集上进行的实验表明,该方法优于行业的高级图形存储方法。

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