用不相交路径的紧性来总结图数据

M. Hassaan
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引用次数: 0

摘要

图被广泛用于在许多应用领域建模许多真实世界的数据,如化合物、蛋白质结构、基因结构、代谢途径、通信网络和图像实体。图的摘要是一项非常重要的任务,即寻找给定图的摘要。图形摘要任务有以下许多好处。通过图的汇总,尽可能减少数据量和存储空间,加快查询处理算法,并应用交互式分析。本文提出了一种新的基于不相交路径紧致性的图摘要方法。我们的算法叫做dj_path。dj_path是边分组技术。实验结果表明,DJ_Path在压缩比(压缩效率提高2倍)、总响应时间(比Slugger高一个数量级以上)和内存使用(内存消耗减少8倍)方面都优于最先进的方法Slugger。
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Summarizing Graph Data Via the Compactness of Disjoint Paths
: Graphs are widely used to model many real-world data in many application domains such as chemical compounds, protein structures, gene structures, metabolic pathways, communication networks, and images entities. Graph summarization is very important task which searching for a summary of the given graph. There are many benefits of the graph summarization task which are as follows. By graph summarization, we reduce the data volume and storage as much as possible, speedup the query processing algorithms, and apply the interactive analysis. In this paper, we propose a new graph summarization method based on the compactness of disjoint paths. Our algorithm called DJ_Paths. DJ_Paths is edge-grouping technique. The experimental results show that DJ_Path outperforms the state-of-the-art method, Slugger, with respect to compression ratio (It achieves up to 2x better compression), total response time (It outperforms Slugger by more than one order of magnitude), and memory usage (It is 8x less memory consumption).
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