@inproceedings{ivanova-etal-2019-tools,
title = "Tools for supporting language learning for Sakha",
author = "Ivanova, Sardana and
Katinskaia, Anisia and
Yangarber, Roman",
editor = "Hartmann, Mareike and
Plank, Barbara",
booktitle = "Proceedings of the 22nd Nordic Conference on Computational Linguistics",
month = sep # "{--}" # oct,
year = "2019",
address = "Turku, Finland",
publisher = {Link{\"o}ping University Electronic Press},
url = "https://aclanthology.org/W19-6117",
pages = "155--163",
abstract = "This paper presents an overview of the available linguistic resources for the Sakha language, and presents new tools for supporting language learning for Sakha. The essential resources include a morphological analyzer, digital dictionaries, and corpora of Sakha texts. Based on these resources, we implement a language-learning environment for Sakha in the Revita CALL platform. We extended an earlier, preliminary version of the morphological analyzer/transducer, built on the Apertium finite-state platform. The analyzer currently has an adequate level of coverage, between 86{\%} and 89{\%} on two Sakha corpora. Revita is a freely available online language learning platform for learners beyond the beginner level. We describe the tools for Sakha currently integrated into the Revita platform. To the best of our knowledge, at present, this is the first large-scale project undertaken to support intermediate-advanced learners of a minority Siberian language.",
}
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%0 Conference Proceedings
%T Tools for supporting language learning for Sakha
%A Ivanova, Sardana
%A Katinskaia, Anisia
%A Yangarber, Roman
%Y Hartmann, Mareike
%Y Plank, Barbara
%S Proceedings of the 22nd Nordic Conference on Computational Linguistics
%D 2019
%8 sep–oct
%I Linköping University Electronic Press
%C Turku, Finland
%F ivanova-etal-2019-tools
%X This paper presents an overview of the available linguistic resources for the Sakha language, and presents new tools for supporting language learning for Sakha. The essential resources include a morphological analyzer, digital dictionaries, and corpora of Sakha texts. Based on these resources, we implement a language-learning environment for Sakha in the Revita CALL platform. We extended an earlier, preliminary version of the morphological analyzer/transducer, built on the Apertium finite-state platform. The analyzer currently has an adequate level of coverage, between 86% and 89% on two Sakha corpora. Revita is a freely available online language learning platform for learners beyond the beginner level. We describe the tools for Sakha currently integrated into the Revita platform. To the best of our knowledge, at present, this is the first large-scale project undertaken to support intermediate-advanced learners of a minority Siberian language.
%U https://aclanthology.org/W19-6117
%P 155-163
Markdown (Informal)
[Tools for supporting language learning for Sakha](https://aclanthology.org/W19-6117) (Ivanova et al., NoDaLiDa 2019)
ACL
- Sardana Ivanova, Anisia Katinskaia, and Roman Yangarber. 2019. Tools for supporting language learning for Sakha. In Proceedings of the 22nd Nordic Conference on Computational Linguistics, pages 155–163, Turku, Finland. Linköping University Electronic Press.