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Transition-Based Neural Word Segmentation Using Word-Level Features

Journal of Artificial Intelligence Research - United States
doi 10.1613/jair.1.11266
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Abstract

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Categories
Artificial Intelligence
Date

December 23, 2018

Authors
Meishan ZhangYue ZhangGuohong Fu
Publisher

AI Access Foundation


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