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Node, Motif and Subgraph: Leveraging Network Functional Blocks Through Structural Convolution

机译:节点,母题和子图:通过结构卷积利用网络功能块

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Networks or graphs provide a natural and generic way for modeling rich structured data. Recent research on graph analysis has been focused on representation learning, of which the goal is to encode the network structures into distributed embedding vectors, so as to enable various downstream applications through off-the-shelf machine learning. However, existing methods mostly focus on node-level embedding, which is insufficient for subgraph analysis. Moreover, their leverage of network structures through path sampling or neighborhood preserving is implicit and coarse. Network motifs allow graph analysis in a finer granularity, but existing methods based on motif matching are limited to enumerated simple motifs and do not leverage node labels and supervision. In this paper, we develop NEST, a novel hierarchical network embedding method combining motif filtering and convolutional neural networks. Motif-based filtering enables NEST to capture exact small structures within networks, and convolution over the filtered embedding allows it to fully explore complex substructures and their combinations. NEST can be trivially applied to any domain and provide insight into particular network functional blocks. Extensive experiments on protein function prediction, drug toxicity prediction and social network community identification have demonstrated its effectiveness and efficiency.
机译:网络或图形提供了一种自然而通用的方式来对丰富的结构化数据进行建模。关于图分析的最新研究已集中在表示学习上,其目的是将网络结构编码为分布式嵌入向量,以便通过现成的机器学习实现各种下游应用。但是,现有方法主要集中在节点级嵌入,这不足以进行子图分析。而且,它们通过路径采样或邻域保留对网络结构的影响是隐含的和粗糙的。网络主题允许以更精细的粒度进行图形分析,但是基于主题匹配的现有方法仅限于枚举的简单主题,并且不利用节点标签和监督。在本文中,我们开发了NEST,这是一种将主题过滤和卷积神经网络相结合的新型分层网络嵌入方法。基于主题的过滤使NEST能够捕获网络中确切的小结构,并且通过过滤后的嵌入进行卷积可以充分探索复杂的子结构及其组合。 NEST可以轻松地应用于任何领域,并提供对特定网络功能块的深入了解。在蛋白质功能预测,药物毒性预测和社交网络社区识别方面的大量实验证明了其有效性和有效性。

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