Feature-based Decipherment for Large Vocabulary Machine Translation
Abstract
Orthographic similarities across languages provide a strong signal for probabilistic decipherment, especially for closely related language pairs. The existing decipherment models, however, are not well-suited for exploiting these orthographic similarities. We propose a log-linear model with latent variables that incorporates orthographic similarity features. Maximum likelihood training is computationally expensive for the proposed log-linear model. To address this challenge, we perform approximate inference via MCMC sampling and contrastive divergence. Our results show that the proposed log-linear model with contrastive divergence scales to large vocabularies and outperforms the existing generative decipherment models by exploiting the orthographic features.
Cite
@article{arxiv.1508.02142,
title = {Feature-based Decipherment for Large Vocabulary Machine Translation},
author = {Iftekhar Naim and Daniel Gildea},
journal= {arXiv preprint arXiv:1508.02142},
year = {2015}
}