@inproceedings{toral-way-2011-automatic,
title = "Automatic acquisition of named entities for rule-based machine translation",
author = "Toral, Antonio and
Way, Andy",
editor = "S{\'a}nchez-Martinez, Felipe and
P{\'e}rez-Ortiz, Juan Antonio",
booktitle = "Proceedings of the Second International Workshop on Free/Open-Source Rule-Based Machine Translation",
month = jan # " 20-21",
year = "2011",
address = "Barcelona, Spain",
url = "https://aclanthology.org/2011.freeopmt-1.7",
pages = "37--44",
abstract = "This paper proposes to enrich RBMT dictionaries with Named Entities (NEs) automatically acquired from Wikipedia. The method is applied to the Apertium English{--}Spanish system and its performance compared to that of Apertium with and without handtagged NEs. The system with automatic NEs outperforms the one without NEs, while results vary when compared to a system with handtagged NEs (results are comparable for Spanish→English but slightly worst for English→Spanish). Apart from that, adding automatic NEs contributes to decreasing the amount of unknown terms by more than 10{\%}.",
}
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%0 Conference Proceedings
%T Automatic acquisition of named entities for rule-based machine translation
%A Toral, Antonio
%A Way, Andy
%Y Sánchez-Martinez, Felipe
%Y Pérez-Ortiz, Juan Antonio
%S Proceedings of the Second International Workshop on Free/Open-Source Rule-Based Machine Translation
%D 2011
%8 jan 20 21
%C Barcelona, Spain
%F toral-way-2011-automatic
%X This paper proposes to enrich RBMT dictionaries with Named Entities (NEs) automatically acquired from Wikipedia. The method is applied to the Apertium English–Spanish system and its performance compared to that of Apertium with and without handtagged NEs. The system with automatic NEs outperforms the one without NEs, while results vary when compared to a system with handtagged NEs (results are comparable for Spanish→English but slightly worst for English→Spanish). Apart from that, adding automatic NEs contributes to decreasing the amount of unknown terms by more than 10%.
%U https://aclanthology.org/2011.freeopmt-1.7
%P 37-44
Markdown (Informal)
[Automatic acquisition of named entities for rule-based machine translation](https://aclanthology.org/2011.freeopmt-1.7) (Toral & Way, FreeOpMT 2011)
ACL