Improving historical spelling normalization with bi-directional LSTMs and multi-task learning
Computation and Language
2016-10-26 v1
Abstract
Natural-language processing of historical documents is complicated by the abundance of variant spellings and lack of annotated data. A common approach is to normalize the spelling of historical words to modern forms. We explore the suitability of a deep neural network architecture for this task, particularly a deep bi-LSTM network applied on a character level. Our model compares well to previously established normalization algorithms when evaluated on a diverse set of texts from Early New High German. We show that multi-task learning with additional normalization data can improve our model's performance further.
Cite
@article{arxiv.1610.07844,
title = {Improving historical spelling normalization with bi-directional LSTMs and multi-task learning},
author = {Marcel Bollmann and Anders Søgaard},
journal= {arXiv preprint arXiv:1610.07844},
year = {2016}
}
Comments
Accepted to COLING 2016