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首页> 外文期刊>ACM transactions on knowledge discovery from data >On Proximity and Structural Role-based Embeddings in Networks: Misconceptions, Techniques, and Applications
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On Proximity and Structural Role-based Embeddings in Networks: Misconceptions, Techniques, and Applications

机译:在网络中的邻近和结构角色嵌入式:误解,技术和应用

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摘要

Structural roles define sets of structurally similar nodes that are more similar to nodes inside the set than outside, whereas communities define sets of nodes with more connections inside the set than outside. Roles based on structural similarity and communities based on proximity are fundamentally different but important complementary notions. Recently, the notion of structural roles has become increasingly important and has gained a lot of attention due to the proliferation of work on learning representations (node/edge embeddings) from graphs that preserve the notion of roles. Unfortunately, recent work has sometimes confused the notion of structural roles and communities (based on proximity) leading to misleading or incorrect claims about the capabilities of network embedding methods. As such, this article seeks to clarify the misconceptions and key differences between structural roles and communities, and formalize the general mechanisms (e.g., random walks and feature diffusion) that give rise to community- or role-based structural embeddings. We theoretically prove that embedding methods based on these mechanisms result in either community- or role-based structural embeddings. These mechanisms are typically easy to identify and can help researchers quickly determine whether a method preserves community- or role-based embeddings. Furthermore, they also serve as a basis for developing new and improved methods for community- or role-based structural embeddings. Finally, we analyze and discuss applications and data characteristics where community- or role-based embeddings are most appropriate.
机译:结构角色定义了结构上类似的节点的集合,这些节点与集中的节点更类似于外部外部的节点,而社区定义了集中的节点集中,并且在集中的内部内部的连接更多。基于结构相似性和基于邻近的社区的角色是根本不同但重要的互补概念。最近,结构角色的概念已经变得越来越重要,并且由于学习陈述的研究(节点/边缘嵌入)的工作扩散而产生了很大的关注,以保留角色概念。不幸的是,最近的工作有时会使结构角色和社区的概念混淆(基于接近度),导致对网络嵌入方法的能力的误导或错误的要求。因此,本文旨在阐明结构角色和社区之间的误解和关键差异,并正式确定导致社区或角色结构嵌入的一般机制(例如,随机漫游和特征扩散)。理论上,我们证明了基于这些机制的嵌入方法导致基于社区或角色的结构嵌入。这些机制通常很容易识别,并且可以帮助研究人员快速确定方法是否保留了基于社区或基于角色的嵌入品。此外,它们还作为开发基于社区或基于角色的结构嵌入的新的和改进方法的基础。最后,我们分析并讨论了社区或角色嵌入式最合适的应用程序和数据特征。

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