Yun Jin
Electronics and Telecommunications Research Institute
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Publication
Featured researches published by Yun Jin.
Expert Systems With Applications | 2017
Kangil Kim; Yun Jin; Seung-Hoon Na; Young-Kil Kim
Fixing input sites in ensembles restrict learning movable and distant patterns.The new ensemble changes the sites across component classifiers sharing one position.The ensemble improves accuracy in learning movable patterns and its lower bound.The neural network framework with the ensemble improves accuracy in syntax analysis.The framework is accurate as state-of-the-art methods in Spanish dependency parsing. In this paper, we introduce a new ensemble method specialized to sequential labeling for syntax analysis and propose a neural network framework adopting the ensemble for dependency parsing of natural sentences. The ensemble method assigns sliding input sites to component classifiers which commonly include the position of the label to predict. The method improves labeling accuracy compared to simple ensemble with weighted voting if critical input features have flexible and long distance from the position to predict over sentences. We show the impact of the ensemble through theoretical estimation of its lower bound accuracy and through empirical analysis in a toy problem varying the strength of movability of critical input features. We apply the proposed neural network framework to the two phases of dependency parsing: dependency and relation tagging. Additionally, we newly define the dependency tagging problem using relative dependency and provide a post-processing method to build correct parse trees. In the practical dependency parsing of Spanish IULA corpus, applying the ensemble instead of the simple weighted voting significantly improves accuracy by 0.09% in relation tagging and by 0.06% to 1.59% with respect to the comparison settings in dependency tagging. The framework shows at least 0.28% improvement in the unlabeled attachment score and 0.14% in the labeled attachment score compared to state-of-the-art dependency parsers.
Archive | 2009
Ki Young Lee; Oh Woog Kwon; Sung Kwon Choi; Yoon-Hyung Roh; Chang Hyun Kim; Young-Ae Seo; Seong Il Yang; Yun Jin; Jinxia Huang; Yingshun Wu; Eun-Jin Park; Young Kil Kim; Sang Kyu Park
Archive | 2009
Young Ae Seo; Chang Hyun Kim; Seong Il Yang; Changhao Yin; Yun Jin; Jinxia Huang; Sung Kwon Choi; Ki Young Lee; Oh Woog Kwon; Yoon Hyung Roh; Eun jin Park; Ying Shun Wu; Young Kil Kim; Sang Kyu Park
Archive | 2008
Chang Hyun Kim; Young Ae Seo; Young-Sook Hwang; Young Kil Kim; Sung Kwon Choi; Oh Woog Kwon; Ki Young Lee; Seong Il Yang; Yun Jin; Yoon Hyung Roh; Changhao Ying; Eun jin Park; Ying Shun Wu; Sang Kyu Park
Archive | 2009
Yun Jin; Oh Woog Kwon; Ying Shun Wu; Changhao Yin; Sung Kwon Choi; Chang Hyun Kim; Seong Il Yang; Ki Young Lee; Yoon Hyung Roh; Young Ao Seo; Eun jin Park; Young Kii Kim; Sang Kyu Park
Archive | 2013
Oh Woog Kwon; Yoon Hyung Roh; Seong Il Yang; Ki Young Lee; Sang Keun Jung; Sung Kwon Choi; Eun jin Park; Jinxia Huang; Young Kil Kim; Chang Hyun Kim; Seung-Hoon Na; Young Ae Seo; Yun Jin; Jong Hun Shin; Sang Kyu Park
Archive | 2009
Sung Kwon Choi; Ki Young Lee; Yoon Hyung Roh; Oh Woog Kwon; Chang-Hyun Kim; Young Ae Seo; Seong Ii Yang; Yun Jin; Jin-Xia Huang; Yingshun Wu; Changhao Yin; Eun jin Park; Young Kil Kim; Sang Kyu Park
Archive | 2011
Chang-Hyun Kim; Young Ae Seo; Seong Il Yang; Jin Xia Huang; Sung Kwon Choi; Yoon Hyung Roh; Ki Young Lee; Oh Woog Kwon; Yun Jin; Eun jin Park; Jong Hun Shin; Young Kil Kim; Sang Kyu Park
Archive | 2013
Oh-Woog Kwon; Ki Young Lee; Sung-Kwon Choi; Yoon-Hyung Roh; Yun Jin; Eun-Jin Park; Young-Kil Kim; Sang-Kyu Park
Archive | 2011
Sung Kwon Choi; Ki Young Lee; Yoon Hyung Roh; Oh Woog Kwon; Young Kil Kim; Chang-Hyun Kim; Young Ae Seo; Seong Il Yang; Jin-Xia Huang; Yun Jin; Eun jin Park; Yingshun Wu; Jong Hun Shin; Sang Kyu Park