Sarwan Ali, Muhammad Ahmad, Maham Anwer Beg, Imdad Ullah Khan, Safiullah Faizullah, Muhammad Asad Khan
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The summary is structured as a graph on supernodes (subsets of vertices of <i>G</i>), where weighted superedges connect pairs of supernodes. The methodology focuses on constructing a summary graph with <i>k</i> supernodes, aiming to minimize the reconstruction error (the difference between the original graph and the graph reconstructed from the summary) while maximizing homogeneity with respect to the node attributes. The construction process involves iteratively merging pairs of nodes. To enhance computational efficiency, we derive a closed-form expression for efficiently computing the reconstruction error (RE) after merging a pair, enabling constant-time approximation of this score. We assign a weight to each supernode, quantifying their contribution to the score of pairs, and utilize a weighted sampling strategy to select the best pair for merging. Notably, a logarithmic-sized sample achieves a summary comparable in quality based on various measures. Additionally, we propose a sparsification step for the constructed summary, aiming to reduce storage costs to a specified target size with a marginal increase in RE. Empirical evaluations across diverse real-world graphs demonstrate that <span>SsAG</span> exhibits superior speed, being up to 17 × faster, while generating summaries of comparable quality. 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引用次数: 0
摘要
在社交网络、生物网络和通信网络等各种现实世界应用中,图摘要已成为管理和分析大规模图不可或缺的一部分。现有的图摘要方法往往面临计算成本高、对大型图的适用性有限或缺乏节点属性等挑战。为此,我们引入了 SsAG,这是一种高效、可扩展的有损图总结方法,旨在保留原始图的基本结构。SsAG 可计算输入图的稀疏表示(摘要),并可容纳具有节点属性的图。摘要的结构是上节点(G 的顶点子集)图,其中加权上桥连接上节点对。该方法的重点是构建具有 k 个超级节点的摘要图,旨在最大限度地减少重建误差(原始图与根据摘要重建的图之间的差异),同时最大限度地提高节点属性的同质性。构建过程包括迭代合并节点对。为了提高计算效率,我们推导出了一个闭式表达式,用于有效计算合并节点对后的重建误差 (RE),从而在恒定时间内逼近这一分数。我们为每个超级节点分配一个权重,量化它们对数据对得分的贡献,并利用加权抽样策略选择最佳数据对进行合并。值得注意的是,一个对数大小的样本可以获得基于各种衡量标准的质量相当的摘要。此外,我们还为构建的摘要提出了一个稀疏化步骤,旨在将存储成本降低到指定的目标大小,而 RE 只会有边际增加。对各种真实图进行的经验评估表明,SsAG 的速度更快,最高可达 17 倍,同时生成的摘要质量相当。这项工作代表了该领域的重大进步,解决了计算难题,展示了 SsAG 在图摘要中的有效性。
SsAG: Summarization and Sparsification of Attributed Graphs
Graph summarization has become integral for managing and analyzing large-scale graphs in diverse real-world applications, including social networks, biological networks, and communication networks. Existing methods for graph summarization often face challenges, being either computationally expensive, limiting their applicability to large graphs, or lacking the incorporation of node attributes. In response, we introduce SsAG, an efficient and scalable lossy graph summarization method designed to preserve the essential structure of the original graph. SsAG computes a sparse representation (summary) of the input graph, accommodating graphs with node attributes. The summary is structured as a graph on supernodes (subsets of vertices of G), where weighted superedges connect pairs of supernodes. The methodology focuses on constructing a summary graph with k supernodes, aiming to minimize the reconstruction error (the difference between the original graph and the graph reconstructed from the summary) while maximizing homogeneity with respect to the node attributes. The construction process involves iteratively merging pairs of nodes. To enhance computational efficiency, we derive a closed-form expression for efficiently computing the reconstruction error (RE) after merging a pair, enabling constant-time approximation of this score. We assign a weight to each supernode, quantifying their contribution to the score of pairs, and utilize a weighted sampling strategy to select the best pair for merging. Notably, a logarithmic-sized sample achieves a summary comparable in quality based on various measures. Additionally, we propose a sparsification step for the constructed summary, aiming to reduce storage costs to a specified target size with a marginal increase in RE. Empirical evaluations across diverse real-world graphs demonstrate that SsAG exhibits superior speed, being up to 17 × faster, while generating summaries of comparable quality. This work represents a significant advancement in the field, addressing computational challenges and showcasing the effectiveness of SsAG in graph summarization.
期刊介绍:
TKDD welcomes papers on a full range of research in the knowledge discovery and analysis of diverse forms of data. Such subjects include, but are not limited to: scalable and effective algorithms for data mining and big data analysis, mining brain networks, mining data streams, mining multi-media data, mining high-dimensional data, mining text, Web, and semi-structured data, mining spatial and temporal data, data mining for community generation, social network analysis, and graph structured data, security and privacy issues in data mining, visual, interactive and online data mining, pre-processing and post-processing for data mining, robust and scalable statistical methods, data mining languages, foundations of data mining, KDD framework and process, and novel applications and infrastructures exploiting data mining technology including massively parallel processing and cloud computing platforms. TKDD encourages papers that explore the above subjects in the context of large distributed networks of computers, parallel or multiprocessing computers, or new data devices. TKDD also encourages papers that describe emerging data mining applications that cannot be satisfied by the current data mining technology.