Autoencoding Improves Pre-trained Word Embeddings
Abstract
Prior work investigating the geometry of pre-trained word embeddings have shown that word embeddings to be distributed in a narrow cone and by centering and projecting using principal component vectors one can increase the accuracy of a given set of pre-trained word embeddings. However, theoretically, this post-processing step is equivalent to applying a linear autoencoder to minimise the squared l2 reconstruction error. This result contradicts prior work (Mu and Viswanath, 2018) that proposed to remove the top principal components from pre-trained embeddings. We experimentally verify our theoretical claims and show that retaining the top principal components is indeed useful for improving pre-trained word embeddings, without requiring access to additional linguistic resources or labelled data.
Cite
@article{arxiv.2010.13094,
title = {Autoencoding Improves Pre-trained Word Embeddings},
author = {Masahiro Kaneko and Danushka Bollegala},
journal= {arXiv preprint arXiv:2010.13094},
year = {2020}
}
Comments
COLING 2020