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INFORMATICASI
2010
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Communications
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INFORMATICASI 2010
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Using Bagging and Boosting Techniques for Improving Coreference Resolution
13 years 3 months ago
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Smita Vemulapalli, Xiaoqiang Luo, John F. Pitrelli
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Added
05 Mar 2011
Updated
05 Mar 2011
Type
Journal
Year
2010
Where
INFORMATICASI
Authors
Smita Vemulapalli, Xiaoqiang Luo, John F. Pitrelli, Imed Zitouni
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Researcher Info
INFORMATICASI 1998 Study Group
Computer Vision