Katinskaia , A , Ivanova , S & Yangarber , R 2019 , Multiple Admissibility in Language Learning: Judging Grammaticality using Unlabeled Data . in T Erjavec , M Marcińczuk , P Nakov , J Piskorski , L Pivovarova , J Šnajder , J Steinberger & R Yangarber (eds) , The 7th Workshop on Balto-Slavic Natural Language Processing : Proceedings of the Workshop . The Association for Computational Linguistics , Stroudsburg , pp. 12-22 , Workshop on Balto-Slavic Natural Language Processing , Florence , Italy , 02/08/2019 . https://doi.org/10.18653/v1/W19-3702
Title: | Multiple Admissibility in Language Learning: : Judging Grammaticality using Unlabeled Data |
Author: | Katinskaia, Anisia; Ivanova, Sardana; Yangarber, Roman |
Other contributor: |
Erjavec, Tomaž
Marcińczuk, Michał Nakov, Preslav Piskorski, Jakub Pivovarova, Lidia Šnajder, Jan Steinberger, Josef Yangarber, Roman |
Contributor organization: | Department of Languages Department of Computer Science Department of Digital Humanities |
Publisher: | The Association for Computational Linguistics |
Date: | 2019-08 |
Language: | eng |
Number of pages: | 11 |
Belongs to series: | The 7th Workshop on Balto-Slavic Natural Language Processing |
ISBN: | 978-1-950737-41-3 |
DOI: | https://doi.org/10.18653/v1/W19-3702 |
URI: | http://hdl.handle.net/10138/317348 |
Abstract: | We present our work on the problem of detection Multiple Admissibility (MA) in language learning. Multiple Admissibility occurs when more than one grammatical form of a word fits syntactically and semantically in a given context. In second-language education—in particular, in intelligent tutoring systems/computer-aided language learning (ITS/CALL), systems generate exercises automatically. MA implies that multiple alternative answers are possible. We treat the problem as a grammaticality judgement task. We train a neural network with an objective to label sentences as grammatical or ungrammatical, using a "simulated learner corpus": a dataset with correct text and with artificial errors, generated automatically. While MA occurs commonly in many languages, this paper focuses on learning Russian. We present a detailed classification of the types of constructions in Russian, in which MA is possible, and evaluate the model using a test set built from answers provided by users of the Revita language learning system. |
Subject: | 113 Computer and information sciences |
Peer reviewed: | Yes |
Rights: | cc_by |
Usage restriction: | openAccess |
Self-archived version: | publishedVersion |
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