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motif2vec: Motif Aware Node Representation Learning for Heterogeneous Networks

机译:motif2vec:异构网络的Motif感知节点表示学习

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Recent years have witnessed a surge of interest in machine learning on graphs and networks with applications ranging from IoT traffic management to social network recommendations. Supervised machine learning tasks in networks such as node classification and link prediction require us to perform feature engineering that is known and agreed to be the key to success in applied machine learning. Research efforts dedicated to representation learning, especially representation learning using deep learning, has shown us ways to automatically learn relevant features from vast amounts of potentially noisy, raw data. However, most of the methods are inadequate to handle heterogeneous information networks which pretty much represents most real world data today. The methods cannot preserve the structure and semantic of multiple types of nodes and links well enough, capture higher-order heterogeneous connectivity patterns, and ensure coverage of nodes for which representations are generated. In this paper, we propose a novel efficient algorithm, motif2vec that learns node representations or embeddings for heterogeneous networks. Specifically, we leverage higher-order, recurring, and statistically significant network connectivity patterns in the form of motifs to transform the original graph to motif graph(s), conduct biased random walk to efficiently explore higher order neighborhoods, and then employ heterogeneous skip-gram model to generate the embeddings. We evaluate the proposed algorithm on multiple real-world networks from diverse domains and against existing state-of-the-art methods on multi-class node classification and link prediction tasks, and demonstrate its consistent superiority over prior work.
机译:近年来,目睹了对图和网络上的机器学习的兴趣激增,其应用范围从IoT流量管理到社交网络建议。网络中受监督的机器学习任务(例如节点分类和链接预测)要求我们执行已知且公认是成功应用机器学习的关键的特征工程。致力于表示学习(尤其是使用深度学习的表示学习)的研究工作向我们展示了从大量潜在的嘈杂原始数据中自动学习相关功能的方法。但是,大多数方法不足以处理异构信息网络,该网络几乎代表了当今大多数现实世界的数据。这些方法无法充分保留多种类型的节点的结构和语义,并且无法很好地链接,无法捕获更高阶的异构连接模式,并且无法确保生成表示的节点的覆盖范围。在本文中,我们提出了一种新颖的高效算法motif2vec,该算法可学习异构网络的节点表示或嵌入。具体来说,我们利用主题形式利用高阶,重复出现和具有统计意义的网络连通性模式,将原始图转换为主题图,进行有偏向的随机游走以有效地探索高阶邻域,然后采用异构跳过gram模型生成嵌入。我们针对来自不同领域的多个真实世界网络,以及针对多类节点分类和链接预测任务的现有最新方法,对提出的算法进行了评估,并证明了其在先验工作上的一贯优势。

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