Balanced Tree Partitioning with Succinct Logic

Xindong Wu, Shaojing Sheng, Peng Zhou
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引用次数: 1

Abstract

As a widely used data structure, graphs are good at characterizing data with internal associations, such as social and biological data. Tree structured data are special and are widely used in many real-world applications, such as organizational structure analysis and genealogical knowledge graph reasoning. For example, in kinship knowledge graph analysis, when a genealogical tree is particularly large (more than 25 levels and 45,000 nodes), it is a great challenge to partition this large tree into a specified number of subtrees with succinct logic and a balanced number of nodes. Therefore, in this paper, we propose the TPA (tree partitioning algorithm) algorithm to achieve a balanced and succinct logic partition of large-scale tree structured data. TPA first extracts all related nodes from a massive graph database and then constructs the convergent subgraph into a complete tree with a specified root node. Specifically, several virtual nodes are supplemented for generation-skipping connected nodes to achieve correct node numbering and partitioning. Finally, a graph partitioning algorithm is executed on the complete tree to obtain a specified number of subtrees with succinct logic and balanced node scales. Experiments conducted on four real-world datasets verify the effectiveness of our TPA algorithm.
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具有简洁逻辑的平衡树分区
图是一种广泛使用的数据结构,它擅长描述具有内部关联的数据,如社会数据和生物数据。树形结构数据是一种特殊的数据,在组织结构分析和家谱知识图推理等实际应用中得到了广泛的应用。例如,在亲属关系知识图谱分析中,当一棵家谱树特别大(超过25层和45000个节点)时,用简洁的逻辑和均衡的节点数将这棵大树划分为指定数量的子树是一个很大的挑战。因此,在本文中,我们提出了TPA (tree partitioning algorithm)算法来实现大规模树状结构数据的均衡和简洁的逻辑划分。TPA首先从海量图数据库中提取所有相关节点,然后将收敛子图构造为具有指定根节点的完整树。具体来说,通过对跳代连接节点补充若干虚拟节点,实现正确的节点编号和分区。最后,在完整树上执行图划分算法,得到逻辑简洁、节点尺度均衡的指定数量的子树。在四个真实数据集上进行的实验验证了我们的TPA算法的有效性。
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