metapath2vec:异构网络的可扩展表示学习

Yuxiao Dong, N. Chawla, A. Swami
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引用次数: 1732

摘要

我们研究了异构网络中的表示学习问题。其独特的挑战在于存在多种类型的节点和链路,这限制了传统网络嵌入技术的可行性。我们开发了两个可扩展的表示学习模型,即metapath2vec和metapath2vec++。metapath2vec模型将基于元路径的随机漫步形式化,以构建节点的异构邻域,然后利用异构跳格模型执行节点嵌入。metapath2vec++模型进一步支持异构网络中结构和语义相关性的同时建模。大量实验表明,metapath2vec和metapath2vec++不仅能够在各种异构网络挖掘任务(如节点分类、聚类和相似性搜索)中优于最先进的嵌入模型,而且能够识别不同网络对象之间的结构和语义相关性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
metapath2vec: Scalable Representation Learning for Heterogeneous Networks
We study the problem of representation learning in heterogeneous networks. Its unique challenges come from the existence of multiple types of nodes and links, which limit the feasibility of the conventional network embedding techniques. We develop two scalable representation learning models, namely metapath2vec and metapath2vec++. The metapath2vec model formalizes meta-path-based random walks to construct the heterogeneous neighborhood of a node and then leverages a heterogeneous skip-gram model to perform node embeddings. The metapath2vec++ model further enables the simultaneous modeling of structural and semantic correlations in heterogeneous networks. Extensive experiments show that metapath2vec and metapath2vec++ are able to not only outperform state-of-the-art embedding models in various heterogeneous network mining tasks, such as node classification, clustering, and similarity search, but also discern the structural and semantic correlations between diverse network objects.
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