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基于画像技术的专利审查效能提升研究 被引量:1

Research About the Improvement of Patent Examination Efficiency Based on Portrait Technique
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摘要 本文通过收集整理专利审查主体基础数据,建立表征审查主体个性特点的标签体系,根据多标签间的相似度和关联性划分审查群体,实现不同审查主体的群体划分,同时完成个体画像和群体画像的可视化展示,有利于客观、全面、深层挖掘专利审查效能的影响因素,为整体研究思路"审查主体全面画像、审查效能精准评估、提升方案个性规划"的探索,形成一套适用于不同审查主体的且能有效提升其审查效能的差异化、个性化的提升方案奠定了一定的基础。 By collecting and sorting out the basic data of patent examiners,we establish a label system that characterizes the personality characteristics of an examiner,divides examiner groups according to the similarity and correlation among multiple labels,and achieves the group division of different subjects of examination.At the same time,it completes the visual display of individual and group portraits,which is conducive to objective,comprehensive and in-depth mining the influencing factors of patent examination efficiency.It lays a certain foundation for the exploration of the overall research idea"examining the overall portrait of patent examiners,accurately assessing the effectiveness of the review,improving the personality plan of the scheme",and for the formation of a set of different and individualized promotion schemes suitable for different patent examiners and effectively improving their examination efficiency.
作者 马鑫 栾越 MA Xin;LUAN Yue(Patent Examination Cooperation(Beijing)Center of the Patent Office,CNIPA,Beijing 100160)
出处 《中国发明与专利》 2021年第8期11-17,共7页 China Invention & Patent
关键词 专利审查效能 画像 标签 个体 群体 可视化 patent examination efficiency profile tag individual population visualization
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