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LDA in Character-LSTM-CRF Named Entity Recognition

机译:LDA在字符-LSTM-CRF命名实体识别

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摘要

In this paper, we present a NER system based upon deep learning models with character sequence encoding and word sequence encoding in LSTM layers. The results are boosted with LDA topic models and linear-chain CRF sequence tagging. We reach the new state-of-the-art performance in NER of 81.77 F-measure for Czech and 85.91 F-measure Spanish.
机译:在本文中,我们在LSTM层中基于具有字符序列编码的深度学习模型和LSTM层中编码的单词系统。结果用LDA主题模型和线性链CRF序列标记升高。我们在捷克和85.91 F测量西班牙语中达到了81.77 F-Peaces的新的最先进的表现。

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