Gao Yuan, Zhu Zhen, Kali Raja, Riccaboni Massimo
1IMT School for Advanced Studies Lucca, Piazza San Francesco 19, Lucca, 55100 Italy.
2Department of International Business & Economics, University of Greenwich, Park Row, London, SE10 9LS UK.
Appl Netw Sci. 2018;3(1):26. doi: 10.1007/s41109-018-0090-3. Epub 2018 Aug 13.
When studying patent data as a way to understand innovation and technological change, the conventional indicators might fall short, and categorizing technologies based on the existing classification systems used by patent authorities could cause inaccuracy and misclassification, as shown in literature. Gao et al. (International Workshop on Complex Networks and their Applications, 2017) have established a method to analyze patent classes of similar technologies as network communities. In this paper, we adopt the stabilized Louvain method for network community detection to improve consistency and stability. Incorporating the overlapping community mapping algorithm, we also develop a new method to identify the central nodes based on the temporal evolution of the network structure and track the changes of communities over time. A case study of Germany's patent data is used to demonstrate and verify the application of the method and the results. Compared to the non-network metrics and conventional network measures, we offer a heuristic approach with a dynamic view and more stable results.
在将专利数据作为理解创新和技术变革的一种方式进行研究时,传统指标可能存在不足,并且如文献所示,基于专利局使用的现有分类系统对技术进行分类可能会导致不准确和错误分类。高等人(复杂网络及其应用国际研讨会,2017年)建立了一种将类似技术的专利类别分析为网络社区的方法。在本文中,我们采用稳定的Louvain方法进行网络社区检测,以提高一致性和稳定性。结合重叠社区映射算法,我们还开发了一种基于网络结构的时间演变来识别中心节点并跟踪社区随时间变化的新方法。以德国专利数据为例进行研究,以演示和验证该方法的应用及结果。与非网络指标和传统网络测量方法相比,我们提供了一种具有动态视角且结果更稳定的启发式方法。