Bzhalava Levan, Kaivo-Oja Jari, Hassan Sohaib S, Gerstlberger Wolfgang Dieter
Finland Futures Research Centre, Turku School of Economics, University of Turku, Turku, 20500, Finland.
Department of Business Administration, TalTech School of Business and Governance, Akadeemia tee 3, Tallinn, 12611, Estonia.
Open Res Eur. 2022 Nov 1;2:26. doi: 10.12688/openreseurope.14499.2. eCollection 2022.
This study aims to propose methods for identifying entrepreneurial discovery processes with weak/strong signals of technological changes and incorporating technology foresight in the design and planning of the Smart Specialization Strategy (S3). For this purpose, we first analyse patent abstracts from 2000 to 2009, obtained from the European Patent Office and use a keyword-based text mining approach to collect weak and strong technology signals; the word2vec algorithm is also employed to group weak signal keywords. We then utilize Correlation Explanation (CorEx) topic modelling to link technology weak/strong signals to invention activities for the period 2010-2018 and use the ANOVA statistical method to examine the relationship between technology weak/strong signals and patent values. The results suggest that patents related to weak rather than strong signals are more likely to be high-impact innovations and to serve as a basis for future technological developments. Furthermore, we use latent Dirichlet allocation (LDA) topic modelling to analyse patent activities related to weak/strong technology signals and compute regional topic weights. Finally, we present implications of the research.
本研究旨在提出识别具有技术变革微弱/强烈信号的创业发现过程的方法,并将技术预见纳入智能专业化战略(S3)的设计和规划中。为此,我们首先分析了从欧洲专利局获取的2000年至2009年的专利摘要,并使用基于关键词的文本挖掘方法来收集微弱和强烈的技术信号;还采用了word2vec算法对微弱信号关键词进行分组。然后,我们利用相关性解释(CorEx)主题建模将2010 - 2018年期间的技术微弱/强烈信号与发明活动联系起来,并使用方差分析统计方法来检验技术微弱/强烈信号与专利价值之间的关系。结果表明,与微弱信号而非强烈信号相关的专利更有可能成为高影响力的创新,并为未来的技术发展奠定基础。此外,我们使用潜在狄利克雷分配(LDA)主题建模来分析与微弱/强烈技术信号相关的专利活动,并计算区域主题权重。最后,我们阐述了该研究的意义。