Learning Universal Network Representation via Link Prediction by Graph Convolutional Neural Network

Weiwei Gu;Fei Gao;Ruiqi Li;Jiang Zhang
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引用次数: 18

Abstract

Network representation learning algorithms, which aim at automatically encoding graphs into low-dimensional vector representations with a variety of node similarity definitions, have a wide range of downstream applications. Most existing methods either have low accuracies in downstream tasks or a very limited application field, such as article classification in citation networks. In this paper, we propose a novel network representation method, named Link Prediction based Network Representation (LPNR), which generalizes the latest graph neural network and optimizes a carefully designed objective function that preserves linkage structures. LPNR can not only learn meaningful node representations that achieve competitive accuracy in node centrality measurement and community detection but also achieve high accuracy in the link prediction task. Experiments prove the effectiveness of LPNR on three real-world networks. With the mini-batch and fixed sampling strategy, LPNR can learn the embedding of large graphs in a few hours.
基于图卷积神经网络的链路预测学习通用网络表示
网络表示学习算法旨在通过各种节点相似性定义将图自动编码为低维向量表示,具有广泛的下游应用。大多数现有的方法要么在下游任务中精度低,要么应用领域非常有限,例如引用网络中的文章分类。在本文中,我们提出了一种新的网络表示方法,称为基于链路预测的网络表示(LPNR),它推广了最新的图神经网络,并优化了精心设计的保持连杆结构的目标函数。LPNR不仅可以学习有意义的节点表示,在节点中心性测量和社区检测中实现竞争精度,而且在链路预测任务中实现高精度。实验证明了LPNR在三个真实网络上的有效性。通过小批量和固定采样策略,LPNR可以在几个小时内学习大型图的嵌入。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
3.80
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