A Structured Variational Autoencoder for Contextual Morphological Inflection
Computation and Language
2020-02-26 v2
Abstract
Statistical morphological inflectors are typically trained on fully supervised, type-level data. One remaining open research question is the following: How can we effectively exploit raw, token-level data to improve their performance? To this end, we introduce a novel generative latent-variable model for the semi-supervised learning of inflection generation. To enable posterior inference over the latent variables, we derive an efficient variational inference procedure based on the wake-sleep algorithm. We experiment on 23 languages, using the Universal Dependencies corpora in a simulated low-resource setting, and find improvements of over 10% absolute accuracy in some cases.
Cite
@article{arxiv.1806.03746,
title = {A Structured Variational Autoencoder for Contextual Morphological Inflection},
author = {Lawrence Wolf-Sonkin and Jason Naradowsky and Sabrina J. Mielke and Ryan Cotterell},
journal= {arXiv preprint arXiv:1806.03746},
year = {2020}
}
Comments
Published at ACL 2018