Node Centralities and Classification Performance for Characterizing Node Embedding Algorithms
Machine Learning
2018-02-20 v1 Social and Information Networks
Machine Learning
Abstract
Embedding graph nodes into a vector space can allow the use of machine learning to e.g. predict node classes, but the study of node embedding algorithms is immature compared to the natural language processing field because of a diverse nature of graphs. We examine the performance of node embedding algorithms with respect to graph centrality measures that characterize diverse graphs, through systematic experiments with four node embedding algorithms, four or five graph centralities, and six datasets. Experimental results give insights into the properties of node embedding algorithms, which can be a basis for further research on this topic.
Cite
@article{arxiv.1802.06368,
title = {Node Centralities and Classification Performance for Characterizing Node Embedding Algorithms},
author = {Kento Nozawa and Masanari Kimura and Atsunori Kanemura},
journal= {arXiv preprint arXiv:1802.06368},
year = {2018}
}
Comments
Under review at ICLR 2018 workshop track