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基于转移学习的中文命名实体识别 被引量:4

Chinese named entity recognition based on transformation learning
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摘要 中文命名实体识别在多个重要领域有广泛的运用,提出一种基于转移学习的算法进行中文命名实体识别,旨在提高识别的准确率和召回率。基于转移学习算法的中心思想是开始以一些简单的结论应用于问题,然后在每个步骤应用转换,选择出每次转换的最优结论再次应用于问题,当选择的转换在足够的空间内不再修改数据时算法停止。提出算法的规则模板和约束文件的获取方法,形成一个完整的用于中文命名实体识别的模型,并利用该模型进行实验,获得了较好的结果。 Chinese named entity recognition is widely used in many important areas. To improve the precision and recall of recognition, a new algorithm for Chinese named entity recognition based on transformation learning is proposed in this paper. The central idea behind Transformation-Based Learning(TBL)is to start with some simple solution to the problem, and apply transformations at each step. The transformation which results in the largest benefit is selected and applied to the problem. The algorithm stops when the selected transformation does not modify the data in enough space.This paper puts forward a method to obtain the rule template and constraints file. According to this, a completed Chinese named entity recognition model is proposed. Using this model to experiment, the precision and recall of named entity recognition get a better result.
出处 《计算机工程与应用》 CSCD 北大核心 2018年第5期117-121,共5页 Computer Engineering and Applications
基金 国质检科技计划资助(No.2014QK111) 中央高校基本科研业务费专项资金(No.2009QJ13) 国家科技支撑计划(No.2013BAK07B02)
关键词 命名实体识别 转移学习 准确率 召回率 named entity recognition transformation-based learning precision recall
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