首页> 外文期刊>SIGKDD explorations >Latent Network Summarization: Bridging Network Embedding and Summarization
【24h】

Latent Network Summarization: Bridging Network Embedding and Summarization

机译:潜在网络摘要:桥接网络嵌入和概述

获取原文
获取原文并翻译 | 示例
           

摘要

Motivated by the computational and storage challenges that dense embeddings pose, we introduce the problem of latent network summarization that aims to learn a compact, latent representation of the graph structure with dimensionality that is independent of the input graph size (i.e., #nodes and #edges), while retaining the ability to derive node representations on the fly. We propose Multi-LENS, an inductive multi-level latent network summarization approach that leverages a set of relational operators and relational functions (compositions of operators) to capture the structure of egonets and higher-order subgraphs, respectively. The structure is stored in low-rank, size-independent structural feature matrices, which along with the relational functions comprise our latent network summary. Multi-LENS is general and naturally supports both homogeneous and heterogeneous graphs with or without directionality, weights, attributes or labels. Extensive experiments on real graphs show 3.5 - 34.3% improvement in AUC for link prediction, while requiring 80 - 2152× less output storage space than baseline embedding methods on large datasets. As application areas, we show the effectiveness of Multi-LENS in detecting anomalies and events in the Enron email communication graph and Twitter co-mention graph.
机译:受密集嵌入姿势的计算和储存挑战的激励,介绍了潜在的网络摘要问题,旨在学习图形结构的紧凑,潜在的表示,其维度与输入图大小(即#nodes和#边缘),同时保留一般派生节点表示的能力。我们提出多镜头,一种感应的多层次潜在网络摘要方法,其利用一组关系运算符和关系功能(运营商的组成),以分别捕获EGonets和高阶子图的结构。该结构存储在低秩的大小无关的结构特征矩阵中,与关系功能一起包括我们的潜在网络摘要。多镜头是通用的,并且自然地支持具有或没有方向性,权重,属性或标签的均匀和异构图形。对真实图的广泛实验显示了3.5-34.3%的AUC用于链路预测,同时需要80-2152倍的输出存储空间,而不是大型数据集上的基线嵌入方法。作为应用领域,我们展示了多镜头检测到SENRON电子邮件通信图中的异常和事件中的多镜头和Twitter合正图。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号