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Distributed aggregation-based attributed graph summarization for summary-based approximate attributed graph queries

机译:基于聚合的基于汇总的归属图概述基于摘要的近似归属图形查询

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摘要

With the drastically increasing size of graph data with more diversified and complex structures, it becomes more challenging to summarize and query large attributed graph data. In this paper, we propose a holistic approach for distributed aggregation-based attributed graph summarization for large-scale approximate attributed graph queries, which incorporates node attributes and relationships into topological structure for generating semantic understandable graph summary in a bottom-up way. First, we propose a holistic strategy of node aggregation to calculate the topological and attributed error increments of merging node pairs. Second, we propose a three-stage distributed implementation framework, where a novel heuristic measure for efficient parallelization is presented to reduce computation and communication costs across multiple machines. Third, a summary-based approximate graph query approach is introduced to accelerate graph query while maintaining high query accuracy. At last, extensive experiments were made over three real-world and synthetic attributed graphs. The results show that our approach has competitive performance in maintaining low error increment and computational costs in comparison with the state-of-the-art aggregation-based graph summarization approach, and that our summarybased approximate graph query can accelerate graph query while maintaining high query accuracy.
机译:随着具有更多样化和复杂结构的图形数据的急剧增加,总结和查询大型归属图数据变得更具挑战性。在本文中,我们提出了一种用于大规模近似归属图查询的分布式聚合的归属图摘要的整体方法,它将节点属性和关系纳入拓扑结构,以便以自下而上的方式生成语义可理解的图谱概要。首先,我们提出了一个节点聚合的整体策略,以计算合并节点对的拓扑和归属误差增量。其次,我们提出了一个三阶段分布式实施框架,其中提出了一种新的高效并行化的启发式测量,以减少多台机器的计算和通信成本。第三,引入了基于摘要的近似图形查询方法来加速图形查询,同时保持高查询精度。最后,在三个现实世界和合成归因图中进行了广泛的实验。结果表明,与基于最先进的聚合的图形摘要方法相比,我们的方法在维持低误差增量和计算成本方面具有竞争性能,并且我们的惯常近似图形查询可以加速图表查询的同时保持高查询准确性。

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