A Survey on Role-Oriented Network Embedding
Pengfei Jiao, Xuan Guo, Ting Pan, Wang Zhang, Yulong Pei

TL;DR
This survey reviews role-oriented network embedding methods, highlighting their differences from community-based approaches, proposing a classification framework, and empirically evaluating representative methods on various role-related tasks.
Contribution
The paper provides the first comprehensive overview and classification of role-oriented network embedding methods, including empirical evaluation on multiple tasks.
Findings
Role-oriented NE captures structural roles beyond proximity.
Representative methods show effectiveness in role discovery tasks.
The survey highlights gaps and future directions in role-based embedding research.
Abstract
Recently, Network Embedding (NE) has become one of the most attractive research topics in machine learning and data mining. NE approaches have achieved promising performance in various of graph mining tasks including link prediction and node clustering and classification. A wide variety of NE methods focus on the proximity of networks. They learn community-oriented embedding for each node, where the corresponding representations are similar if two nodes are closer to each other in the network. Meanwhile, there is another type of structural similarity, i.e., role-based similarity, which is usually complementary and completely different from the proximity. In order to preserve the role-based structural similarity, the problem of role-oriented NE is raised. However, compared to community-oriented NE problem, there are only a few role-oriented embedding approaches proposed recently.…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Complex Network Analysis Techniques · Bioinformatics and Genomic Networks
