Active Learning with Subsequence Sampling Strategy for Sequence Labeling Tasks
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概要
- 論文の詳細を見る
- 2011-06-28
著者
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Okumura Manabu
Precision And Intelligence Laboratory Tokyo Institute Of Technology
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TAKAMURA HIROYA
Precision and Intelligence Laboratory, Tokyo Institute of Technology
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Takamura Hiroya
Precision And Intelligence Laboratory Tokyo Institute Of Technology
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Wanvarie Dittaya
Department Of Computational Intelligence And Systems Science Tokyo Institute Of Technology
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- Active Learning with Subsequence Sampling Strategy for Sequence Labeling Tasks
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