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现代图书情报技术  2014, Vol. 30 Issue (10): 76-83     https://doi.org/10.11925/infotech.1003-3513.2014.10.12
  情报分析与研究 本期目录 | 过刊浏览 | 高级检索 |
面向中文专利文献的单层并列结构识别
石翠, 王杨, 杨彬, 姚晔
辽宁行政学院信息技术系 沈阳 110161
Identification of Non-nest Coordination for Chinese Patent Literature
Shi Cui, Wang Yang, Yang Bin, Yao Ye
Department of Information Technology, Liaoning School of Administration, Shenyang 110161, China
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摘要 

[目的] 为提高并列结构识别结果的准确率, 根据专利文献中并列结构的特点, 提出一种规则与条件随机场相结合的并列结构识别方法。[方法] 根据中文专利文献中并列结构的特点, 运用规则提取对称并列结构; 对规则提取的并列结构进行捆绑, 运用条件随机场识别单层的并列结构; 在上述识别结果的基础上, 运用错误驱动的方法, 对识别结果进行后规则处理。[结果] 实验结果表明, 该方法可以有效地识别专利文献中的单层并列结构, F值达到76.57%。[局限] 实验所用规则可以进一步改进, 规则的运用直接影响并列结构的识别效果。[结论] 规则与条件随机场相结合的识别方法对于中文专利文献中单层并列结构的识别是有效的。

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王杨
杨彬
姚晔
石翠
关键词 专利文献并列结构条件随机场规则    
Abstract

[Objective] In order to improve the accuracy of identification results, according to the characteristics of coordinate structures in Chinese patent literature, this paper presents an identification method combining rules and Conditional Random Fields(CRFs). [Methods] According to the characteristics of coordinate structures, using the rules to extract the symmetrical coordinate structure. Bundling the coordinate structures, using CRFs to identify non-nest coordinate structure. On the basis of the above identification results, using the wrong driver method to deal with the identification results to get the final identification results. [Results] The experimental results show that this method can identify the non-nest coordination in the patent literature effectively and get the F value of 76.57%. [Limitations] Rules used in the experiments can be further improved. The application of the rules directly affects the identification results of coordinate structures. [Conclusions] The identification method by combining rules and CRFs is effective for non-nest coordination in Chinese patent literature.

Key wordsPatent literature    Coordinate structures    CRFs    Rules
收稿日期: 2014-03-31      出版日期: 2014-11-28
:  TP391.1  
通讯作者: 石翠 E-mail: aaasc@163.com     E-mail: aaasc@163.com
作者简介: 作者贡献声明: 石翠: 提出研究思路, 设计研究方案, 进行实验分析, 撰写论文; 王杨: 实验分析, 论文编辑; 杨彬: 设计论文框架及修改论文; 姚晔: 论文修订。
引用本文:   
石翠, 王杨, 杨彬, 姚晔. 面向中文专利文献的单层并列结构识别[J]. 现代图书情报技术, 2014, 30(10): 76-83.
Shi Cui, Wang Yang, Yang Bin, Yao Ye. Identification of Non-nest Coordination for Chinese Patent Literature. New Technology of Library and Information Service, 2014, 30(10): 76-83.
链接本文:  
https://manu44.magtech.com.cn/Jwk_infotech_wk3/CN/10.11925/infotech.1003-3513.2014.10.12      或      https://manu44.magtech.com.cn/Jwk_infotech_wk3/CN/Y2014/V30/I10/76

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