Invariance and identifiability issues for word embeddings
Abstract
Word embeddings are commonly obtained as optimizers of a criterion function of a text corpus, but assessed on word-task performance using a different evaluation function of the test data. We contend that a possible source of disparity in performance on tasks is the incompatibility between classes of transformations that leave and invariant. In particular, word embeddings defined by are not unique; they are defined only up to a class of transformations to which is invariant, and this class is larger than the class to which is invariant. One implication of this is that the apparent superiority of one word embedding over another, as measured by word task performance, may largely be a consequence of the arbitrary elements selected from the respective solution sets. We provide a formal treatment of the above identifiability issue, present some numerical examples, and discuss possible resolutions.
Cite
@article{arxiv.1911.02656,
title = {Invariance and identifiability issues for word embeddings},
author = {Rachel Carrington and Karthik Bharath and Simon Preston},
journal= {arXiv preprint arXiv:1911.02656},
year = {2019}
}
Comments
NIPS 2019