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Cross-lingual annotation projection for weakly supervised relation extraction. SCOPUS

Title
Cross-lingual annotation projection for weakly supervised relation extraction.
Authors
SEOKHWAN KIMMINWOO JEONGJONGHOON LEELee, G.G.
Date Issued
2014-02
Publisher
ACM, Inc.
Abstract
Although researchers have conducted extensive studies on relation extraction in the last decade, statistical systems based on supervised learning are still limited, because they require large amounts of training data to achieve high performance level. In this article, we propose cross-lingual annotation projection methods that leverage parallel corpora to build a relation extraction system for a resource-poor language without significant annotation efforts. To make our method more reliable, we introduce two types of projection approaches with noise reduction strategies. We demonstrate the merit of our method using a Korean relation extraction system trained on projected examples from an English-Korean parallel corpus. Experiments show the feasibility of our approaches through comparison to other systems based on monolingual resources. © 2014 ACM.
URI
https://oasis.postech.ac.kr/handle/2014.oak/34535
DOI
10.1145/2529994
ISSN
1530-0226
Article Type
Article
Citation
ACM Transactions on Asian Language Information Processing (TALIP), vol. 13, no. 1, page. 3:1 - 3:26, 2014-02
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