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Symbolic Graph Embedding Using Frequent Pattern Mining

机译:使用频繁模式挖掘的符号图嵌入

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Relational data mining is becoming ubiquitous in many fields of study. It offers insights into behaviour of complex, real-world systems which cannot be modeled directly using propositional learning. We propose Symbolic Graph Embedding (SGE), an algorithm aimed to learn symbolic node representations. Built on the ideas from the field of inductive logic programming, SGE first samples a given node's neighborhood and interprets it as a transaction database, which is used for frequent pattern mining to identify logical conjuncts of items that co-occur frequently in a given context. Such patterns are in this work used as features to represent individual nodes, yielding interpretable, symbolic node embeddings. The proposed SGE approach on a venue classification task outperforms shallow node embedding methods such as DeepWalk, and performs similarly to metapath2vec, a black-box representation learner that can exploit node and edge types in a given graph. The proposed SGE approach performs especially well when small amounts of data are used for learning, scales to graphs with millions of nodes and edges, and can be run on an of-the-shelf laptop.
机译:关系数据挖掘在许多研究领域中变得无处不在。它提供了对复杂的,真实世界的系统的行为的见解,而这些系统无法使用命题学习直接建模。我们提出了符号图嵌入(SGE),一种旨在学习符号节点表示的算法。基于归纳逻辑编程领域的思想,SGE首先对给定节点的邻域进行采样,并将其解释为事务数据库,该数据库用于频繁模式挖掘,以识别在给定上下文中频繁出现的项的逻辑合取。在本工作中,此类模式用作表示单个节点的功能,从而产生可解释的符号节点嵌入。针对场所分类任务的拟议SGE方法优于诸如DeepWalk之类的浅层节点嵌入方法,并且其执行效果与metapath2vec类似,后者是一种黑盒表示学习器,可以利用给定图中的节点和边缘类型进行学习。当少量数据用于学习,缩放到具有数百万个节点和边缘的图形并且可以在现成的笔记本电脑上运行时,提出的SGE方法的性能特别好。

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