Neural-Brane: An inductive approach for attributed network embedding

Vachik S. Dave, Baichuan Zhang, Pin-Yu Chen, M. Hasan
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引用次数: 1

Abstract

Network embedding methodologies, which learn a distributed vector representation for each vertex in a network, have shown to achieve superior performance in many realworld applications, such as node classification, link prediction, and community detection. However, the existing methods for network embedding are unable to generate representation vectors for unseen vertices; besides, these methods only utilize topological information from the network ignoring a rich set of nodal attributes, which is abundant in all real-life networks. In this paper, we present a novel network embedding approach called Neural-Brane, which overcomes both of the above limitations. For a given network, Neural-Brane extracts latent feature representation of its vertices using a designed neural network model that unifies network topological information and nodal attributes. Additionally, Neural-Brane is an inductive embedding approach, which enables generating embedding vectors for unseen future vertices of the attributed network. We evaluate the quality of vertex embedding produced by Neural-Brane by solving the node classification task on four realworld graph datasets. Experimental results demonstrate the superiority of Neural-Brane over the state-of-the-art existing methods.
神经-膜:一种归纳方法用于属性网络嵌入
网络嵌入方法为网络中的每个顶点学习分布式向量表示,在许多实际应用中,如节点分类、链接预测和社区检测,已经显示出卓越的性能。然而,现有的网络嵌入方法无法为未见顶点生成表示向量;此外,这些方法只利用网络的拓扑信息,而忽略了丰富的节点属性集,这在所有现实网络中都是丰富的。在本文中,我们提出了一种新的网络嵌入方法,称为神经膜,它克服了上述两个限制。对于给定的网络,neural - brane使用设计的神经网络模型提取其顶点的潜在特征表示,该模型统一了网络拓扑信息和节点属性。此外,神经膜是一种归纳嵌入方法,它可以为属性网络的未知未来顶点生成嵌入向量。我们通过解决四个真实世界图数据集上的节点分类任务来评估神经膜生成的顶点嵌入的质量。实验结果表明,神经膜方法优于现有的先进方法。
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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