基于机器学习的聚类技术系统方法:印刷电子技术案例

IF 2.2 Q2 INFORMATION SCIENCE & LIBRARY SCIENCE
Annika Wambsganss , Laura Tomidei , Nathalie Sick , Søren Salomo , Emna Ben Miled
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引用次数: 0

摘要

技术融合被认为是技术创新的基石之一,是两个以前互不相关的技术领域交叉出现的现象。新的技术体系是知识类型、技术成分和交叉点的新组合。因此,专利分析是战略决策的重要组成部分。然而,对大量专利语义进行人工分析往往耗时长、工作量大,即使是专家也难以胜任。为了加强人工专利分析,基于机器学习的新技术越来越受到关注。本研究旨在通过开发和评估一种无监督文本挖掘方法,将两种知识类型的专利自动聚类为四种技术成分,从而丰富这一方法论研究。为此,本研究提出了五步方法,包括不同算法和设计选择之间的比较。该方法适用于从德文特世界专利索引中提取的与印刷电子产品相关的专利,可为自动专利分析提供建议。研究结果表明,不同类型的元件具有不同的意义:专业知识类型的元件可以得到显著的预测结果,而设计知识类型的元件则无法提供显著的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning-based method to cluster a converging technology system: The case of printed electronics

Technology convergence is considered one of the cornerstones of technological innovation as a phenomenon emerging at the intersection of two previously unrelated fields of technology. The new technological system is a new combination of knowledge types, technology components and intersections. For this matter, analyzing patents is an essential part for strategic decision making. However, the manual analysis of large amounts of patent semantics is often time-consuming, extensive, and difficult even for experts. To enhance manual patent analyses, new machine learning-based techniques are gaining increasing interest. This study aims to enrich this methodological research by developing and evaluating an unsupervised text-mining approach to automatically cluster patents of two knowledge types into four technology components. To this end, this study presents a five-step method including the comparison between different algorithms and design choices. This method is applied to printed electronics-relevant patents extracted from the Derwent World Patent Index and enables to draw recommendations for automated patent analyses. The findings show different significances for types of components: while components of the specialized knowledge type could be predicted with significance, components of the design knowledge types could not provide significant results.

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来源期刊
World Patent Information
World Patent Information INFORMATION SCIENCE & LIBRARY SCIENCE-
CiteScore
3.50
自引率
18.50%
发文量
40
期刊介绍: The aim of World Patent Information is to provide a worldwide forum for the exchange of information between people working professionally in the field of Industrial Property information and documentation and to promote the widest possible use of the associated literature. Regular features include: papers concerned with all aspects of Industrial Property information and documentation; new regulations pertinent to Industrial Property information and documentation; short reports on relevant meetings and conferences; bibliographies, together with book and literature reviews.
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