大型网络的实时图划分与嵌入

Wenqi Liu, Hongxiang Li, Bin Xie
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引用次数: 5

摘要

近年来,大规模网络对大数据隐藏信息的分析和提取备受关注。为此,图嵌入是一种将高维图嵌入到低维向量空间中,同时最大限度地保留原始网络结构信息的方法。然而,当为实时应用生成和处理大量图形数据时,有效的图嵌入尤其具有挑战性。在本文中,我们解决了这一挑战,并提出了一种新的实时分布式图嵌入算法(RTDGE),该算法能够以流方式分布式嵌入大规模图。具体来说,我们的RTDGE由以下部分组成:(1)将所有边划分为不同的子图的图划分方案,其中顶点与边相关联,并且可能属于多个子图;(2)实时更新嵌入向量的动态负采样(DNS)方法;(3)将所有局部嵌入向量组合到一个全局向量空间的无监督全局聚合方案。此外,我们还构建了一个基于Apache Kafka和Apache Storm的实时分布式图嵌入平台。大量的实验结果表明,RTDGE在图嵌入效率和准确性方面优于现有的解决方案。
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Real-Time Graph Partition and Embedding of Large Network
Recently, large-scale networks attract significant attention to analyze and extract the hidden information of big data. Toward this end, graph embedding is a method to embed a high dimensional graph into a much lower dimensional vector space while maximally preserving the structural information of the original network. However, effective graph embedding is particularly challenging when massive graph data are generated and processed for real-time applications. In this paper, we address this challenge and propose a new real-time and distributed graph embedding algorithm (RTDGE) that is capable of distributively embedding a large-scale graph in a streaming fashion. Specifically, our RTDGE consists of the following components: (1) a graph partition scheme that divides all edges into distinct subgraphs, where vertices are associated with edges and may belong to several subgraphs; (2) a dynamic negative sampling (DNS) method that updates the embedded vectors in real-time; and (3) an unsupervised global aggregation scheme that combines all locally embedded vectors into a global vector space. Furthermore, we also build a real-time distributed graph embedding platform based on Apache Kafka and Apache Storm. Extensive experimental results show that RTDGE outperforms existing solutions in terms of graph embedding efficiency and accuracy.
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