Persona2vec: a flexible multi-role representations learning framework for graphs
Author(s)
Yoon, Jisung; Yang, Kai-Cheng; Jung, Woo-Sung; Ahn, Yong-Yeol
DownloadPublished version (2.746Mb)
Publisher with Creative Commons License
Publisher with Creative Commons License
Creative Commons Attribution
Terms of use
Metadata
Show full item recordAbstract
Graph embedding techniques, which learn low-dimensional representations of a graph, are achieving state-of-the-art performance in many graph mining tasks. Most existing embedding algorithms assign a single vector to each node, implicitly assuming that a single representation is enough to capture all characteristics of the node. However, across many domains, it is common to observe pervasively overlapping community structure, where most nodes belong to multiple communities, playing different roles depending on the contexts. Here, we propose persona2vec, a graph embedding framework that efficiently learns multiple representations of nodes based on their structural contexts. Using link prediction-based evaluation, we show that our framework is significantly faster than the existing state-of-the-art model while achieving better performance.
Date issued
2021-03-30Department
MIT Connection Science (Research institute)Journal
PeerJ Computer Science
Publisher
PeerJ
Citation
Yoon J, Yang K, Jung W, Ahn Y. 2021. Persona2vec: a flexible multi-role representations learning framework for graphs. PeerJ Computer Science 7:e439
Version: Final published version