Chinese Named Entity Recognition with Character-Level BLSTM and Soft Attention Model

TP391.1; Unlike named entity recognition (NER) for English,the absence of word boundaries reduces the final accuracy for Chinese NER.To avoid accumulated error introduced by word segmentation,a deep model extracting character-level features is carefully built and becomes a basis for a new Chinese NE...

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Veröffentlicht in:北京理工大学学报(英文版) 2020-03, Vol.29 (1), p.60-71
Hauptverfasser: Jize Yin, Senlin Luo, Zhouting Wu, Limin Pan
Format: Artikel
Sprache:eng
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Zusammenfassung:TP391.1; Unlike named entity recognition (NER) for English,the absence of word boundaries reduces the final accuracy for Chinese NER.To avoid accumulated error introduced by word segmentation,a deep model extracting character-level features is carefully built and becomes a basis for a new Chinese NER method,which is proposed in this paper.This method converts the raw text to a character vector sequence,extracts global text features with a bidirectional long short-term memory and extracts local text features with a soft attention model.A linear chain conditional random field is also used to label all the characters with the help of the global and local text features.Experiments based on the Microsoft Research Asia (MSRA) dataset are designed and implemented.Results show that the proposed method has good performance compared to other methods,which proves that the global and local text features extracted have a positive influence on Chinese NER.For more variety in the test domains,a resume dataset from Sina Finance is also used to prove the effectiveness of the proposed method.
ISSN:1004-0579
DOI:10.15918/j.jbit1004-0579.18161