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Jun Suzuki
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Zitiert von
Jahr
Online large-margin training for statistical machine translation
T Watanabe, J Suzuki, H Tsukada, H Isozaki
Proceedings of the 2007 Joint Conference on Empirical Methods in Natural …, 2007
2402007
Semi-supervised sequential labeling and segmentation using giga-word scale unlabeled data
J Suzuki, H Isozaki
Proceedings of ACL-08: HLT, 665-673, 2008
1952008
Neural headline generation on abstract meaning representation
S Takase, J Suzuki, N Okazaki, T Hirao, M Nagata
Proceedings of the 2016 conference on empirical methods in natural language …, 2016
1892016
Interpretable adversarial perturbation in input embedding space for text
M Sato, J Suzuki, H Shindo, Y Matsumoto
arXiv preprint arXiv:1805.02917, 2018
1772018
An empirical study of incorporating pseudo data into grammatical error correction
S Kiyono, J Suzuki, M Mita, T Mizumoto, K Inui
arXiv preprint arXiv:1909.00502, 2019
1622019
Encoder-decoder models can benefit from pre-trained masked language models in grammatical error correction
M Kaneko, M Mita, S Kiyono, J Suzuki, K Inui
arXiv preprint arXiv:2005.00987, 2020
1452020
Information processing method and apparatus and medium
Y Yamaguchi, S Sato, J Suzuki, T Kohno, T Hasegawa, Y Ishii, Y Ueno
US Patent 6,710,771, 2004
1352004
An empirical study of semi-supervised structured conditional models for dependency parsing
J Suzuki, H Isozaki, X Carreras Pérez, M Collins
Conference on Empirical Methods in Natural Language Processing 2009, 551-560, 2009
1132009
Critical care ultrasonography differentiates ARDS, pulmonary edema, and other causes in the early course of acute hypoxemic respiratory failure
H Sekiguchi, LA Schenck, R Horie, J Suzuki, EH Lee, BP McMenomy, ...
Chest 148 (4), 912-918, 2015
1022015
Dependency-based discourse parser for single-document summarization
Y Yoshida, J Suzuki, T Hirao, M Nagata
Proceedings of the 2014 Conference on Empirical Methods in Natural Language …, 2014
1012014
Enantioselective permeation through membranes of chiral helical polymers prepared by depinanylsilylation of poly (diphenylacetylene) with a high content of the pinanylsilyl group
M Teraguchi, J Suzuki, T Kaneko, T Aoki, T Masuda
Macromolecules 36 (26), 9694-9697, 2003
992003
Question classification using HDAG kernel
J Suzuki, H Taira, Y Sasaki, E Maeda
Proceedings of the ACL 2003 workshop on Multilingual summarization and …, 2003
942003
Clinical and molecular characteristics of Klebsiella pneumoniae isolates causing bloodstream infections in Japan: occurrence of hypervirulent infections in health care
S Harada, K Aoki, S Yamamoto, Y Ishii, N Sekiya, H Kurai, K Furukawa, ...
Journal of clinical microbiology 57 (11), 10.1128/jcm. 01206-19, 2019
872019
Cutting-off redundant repeating generations for neural abstractive summarization
J Suzuki, M Nagata
Proceedings of the 15th Conference of the European Chapter of the …, 2017
87*2017
Hierarchical directed acyclic graph kernel: Methods for structured natural language data
J Suzuki, T Hirao, Y Sasaki, E Maeda
Proceedings of the 41st Annual Meeting of the Association for Computational …, 2003
872003
Multi-label text categorization with model combination based on f1-score maximization
A Fujino, H Isozaki, J Suzuki
Proceedings of the Third International Joint Conference on Natural Language …, 2008
862008
Structural modeling of the value of patent
J Suzuki
Research Policy 40 (7), 986-1000, 2011
852011
Association of usual sleep quality and glycemic control in type 2 diabetes in Japanese: A cross sectional study. Sleep and Food Registry in Kanagawa (SOREKA)
R Sakamoto, T Yamakawa, K Takahashi, J Suzuki, MM Shinoda, ...
PloS one 13 (1), e0191771, 2018
842018
SVM answer selection for open-domain question answering
J Suzuki, Y Sasaki, E Maeda
COLING 2002: The 19th International Conference on Computational Linguistics, 2002
832002
Repeat renal biopsy in children with IgA nephropathy.
N Yoshikawa, K Iijima, S Matsuyama, J Suzuki, A Kameda, S Okada, ...
Clinical nephrology 33 (4), 160-167, 1990
821990
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