Measuring Patent Similarity Based on Text Mining and Image Recognition

W. Lin, Wenqiang Yu, Renbin Xiao
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引用次数: 1

Abstract

Patent application is one of the important ways to protect innovation achievements that have great commercial value for enterprises; it is the initial step for enterprises to set the business development track, as well as a powerful means to protect their core competitiveness. The emergence of a large amount of patent data makes the effective detection of patent data difficult, and patent infringement cases occur frequently. Manual measurement in patent detection is slow, costly, and subjective, and can only play an auxiliary role in measuring the validity of patents. Protecting the inventive achievements of patent holders and realizing more accurate and effective patent detection were the issues explored by academics. There are five main methods to measure patent similarity: clustering-based method, vector space model (VSM)-based method, subject–action–object (SAO) structure-based method, deep learning-based method, and patent structure-based method. To solve this problem, this paper proposes a calculation method to fuse the similarity of patent text and image. Firstly, the SAO structure extraction technique is used for the patent text to obtain the effective content of the text, and the SAO structure is compared for similarity; secondly, the patent image information is extracted and compared; finally, the patent similarity is obtained by fusing the two aspects of information. The feasibility and effectiveness of the scheme are proven by studying a large number of patent similarity cases in the field of mechanical structures.
基于文本挖掘和图像识别的专利相似度度量
专利申请是企业保护具有重大商业价值的创新成果的重要途径之一;它是企业确立经营发展轨道的第一步,也是保护企业核心竞争力的有力手段。大量专利数据的出现使得专利数据的有效检测变得困难,专利侵权案件频发。在专利检测中,人工测量速度慢、成本高、主观,对专利有效性的测量只能起到辅助作用。保护专利权人的发明成果,实现更加准确有效的专利检测,是学术界探讨的问题。专利相似度的度量方法主要有五种:基于聚类的方法、基于向量空间模型(VSM)的方法、基于主体-动作-对象(SAO)结构的方法、基于深度学习的方法和基于专利结构的方法。为了解决这一问题,本文提出了一种融合专利文本和图像相似度的计算方法。首先,对专利文本采用SAO结构提取技术,获得文本的有效内容,并对SAO结构进行相似性比较;其次,对专利图像信息进行提取和比较;最后,将两方面的信息融合得到专利相似度。通过对机械结构领域大量专利相似案例的研究,验证了该方案的可行性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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