A High-Scalability Graph Modification System for Large-Scale Networks

IF 2.7 4区 计算机科学 Q2 COMPUTER SCIENCE, SOFTWARE ENGINEERING Computer Graphics Forum Pub Date : 2024-08-16 DOI:10.1111/cgf.15191
Shaobin Xu, Minghui Sun, Jun Qin
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Abstract

Modifying network results is the most intuitive way to inject domain knowledge into network detection algorithms to improve their performance. While advances in computation scalability have made detecting large-scale networks possible, the human ability to modify such networks has not scaled accordingly, resulting in a huge ‘interaction gap’. Most existing works only support navigating and modifying edges one by one in a graph visualization, which causes a significant interaction burden when faced with large-scale networks. In this work, we propose a novel graph pattern mining algorithm based on the minimum description length (MDL) principle to partition and summarize multi-feature and isomorphic sub-graph matches. The mined sub-graph patterns can be utilized as mediums for modifying large-scale networks. Combining two traditional approaches, we introduce a new coarse-middle-fine graph modification paradigm (i.e. query graph-based modification sub-graph pattern-based modification raw edge-based modification). We further present a graph modification system that supports the graph modification paradigm for improving the scalability of modifying detected large-scale networks. We evaluate the performance of our graph pattern mining algorithm through an experimental study, demonstrate the usefulness of our system through a case study, and illustrate the efficiency of our graph modification paradigm through a user study.

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适用于大规模网络的高可缩放性图形修改系统
修改网络结果是将领域知识注入网络检测算法以提高其性能的最直观方法。虽然计算可扩展性的进步使检测大规模网络成为可能,但人类修改此类网络的能力却没有相应提高,这就造成了巨大的 "交互差距"。大多数现有作品只支持在图形可视化中逐个导航和修改边,这在面对大规模网络时造成了巨大的交互负担。在这项工作中,我们提出了一种基于最小描述长度(MDL)原则的新型图模式挖掘算法,用于分割和总结多特征和同构子图匹配。挖掘出的子图模式可用作修改大规模网络的媒介。结合两种传统方法,我们引入了一种新的粗-中-细图修改范式(即基于查询图的修改、基于子图模式的修改、基于原始边缘的修改)。我们进一步提出了一个支持图修改范式的图修改系统,以提高修改已检测到的大规模网络的可扩展性。我们通过实验研究评估了图模式挖掘算法的性能,通过案例研究证明了我们系统的实用性,并通过用户研究说明了我们的图修改范式的效率。
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来源期刊
Computer Graphics Forum
Computer Graphics Forum 工程技术-计算机:软件工程
CiteScore
5.80
自引率
12.00%
发文量
175
审稿时长
3-6 weeks
期刊介绍: Computer Graphics Forum is the official journal of Eurographics, published in cooperation with Wiley-Blackwell, and is a unique, international source of information for computer graphics professionals interested in graphics developments worldwide. It is now one of the leading journals for researchers, developers and users of computer graphics in both commercial and academic environments. The journal reports on the latest developments in the field throughout the world and covers all aspects of the theory, practice and application of computer graphics.
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