Improving Skip-Gram based Graph Embeddings via Centrality-Weighted Sampling
Abstract
Network embedding techniques inspired by word2vec represent an effective unsupervised relational learning model. Commonly, by means of a Skip-Gram procedure, these techniques learn low dimensional vector representations of the nodes in a graph by sampling node-context examples. Although many ways of sampling the context of a node have been proposed, the effects of the way a node is chosen have not been analyzed in depth. To fill this gap, we have re-implemented the main four word2vec inspired graph embedding techniques under the same framework and analyzed how different sampling distributions affects embeddings performance when tested in node classification problems. We present a set of experiments on different well known real data sets that show how the use of popular centrality distributions in sampling leads to improvements, obtaining speeds of up to 2 times in learning times and increasing accuracy in all cases.
Cite
@article{arxiv.1907.08793,
title = {Improving Skip-Gram based Graph Embeddings via Centrality-Weighted Sampling},
author = {Pedro Almagro-Blanco and Fernando Sancho-Caparrini},
journal= {arXiv preprint arXiv:1907.08793},
year = {2019}
}