AHINE: Adaptive Heterogeneous Information Network Embedding

Yucheng Lin, Xiaoqing Yang, Zang Li, Jieping Ye
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引用次数: 2

Abstract

Network embedding is an effective way to solve the network analytics problems such as node classification, link prediction, etc. It represents network elements using low dimensional vectors such that the graph structural information and properties are maximumly preserved. Many prior works focused on embeddings for networks with the same type of edges or vertices, while some works tried to generate embeddings for heterogeneous network using mechanisms like specially designed meta paths. In this paper, we propose novel Adaptive Heterogeneous Information Network Embedding (AHINE), to compute distributed representations for elements in heterogeneous networks. Specially, AHINE uses an adaptive deep model to learn network embeddings that maximizes the likelihood of preserving the relation chains not only between adjacent nodes but also between non-adjacent nodes. We apply our embeddings to a large network of points of interest (POIs) and achieve superior accuracy on some prediction problems on a ride-hailing platform. In addition, we show that AHINE outperforms state-of-the-art methods on a set of learning tasks on public datasets, including node labelling and similarity ranking in bibliographic networks.
自适应异构信息网络嵌入
网络嵌入是解决节点分类、链路预测等网络分析问题的有效方法。它使用低维向量表示网络元素,从而最大限度地保留了图的结构信息和属性。许多先前的工作都集中在具有相同类型边或顶点的网络的嵌入上,而一些工作则试图使用特殊设计的元路径等机制来生成异构网络的嵌入。在本文中,我们提出了一种新的自适应异构信息网络嵌入(AHINE)来计算异构网络中元素的分布式表示。特别是,AHINE使用自适应深度模型来学习网络嵌入,使相邻节点之间以及非相邻节点之间的关系链保留的可能性最大化。我们将我们的嵌入应用于兴趣点(poi)的大型网络,并在乘车平台的一些预测问题上取得了卓越的准确性。此外,我们表明AHINE在公共数据集的一系列学习任务上优于最先进的方法,包括书目网络中的节点标记和相似度排名。
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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