4.5 Article

Understanding the Trends in Blockchain Domain Through an Unsupervised Systematic Patent Analysis

期刊

IEEE TRANSACTIONS ON ENGINEERING MANAGEMENT
卷 70, 期 6, 页码 1991-2005

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TEM.2021.3074310

关键词

Patents; Data mining; Blockchain; Market research; Security; Monitoring; Databases; Blockchain; distributed ledger technology; patent analysis; outlier detection; unsupervised learning

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This article introduces an unsupervised patent analysis framework that aims to improve the identification of novelty in blockchain-related patents. The proposed method helps companies better target their R&D efforts and maximize the return on technology investments. Experimental results show high precision and recall of the proposed method.
Patent analysis is crucial for technology monitoring, forecasting, and assessment, and facilitates entrepreneurs and different stakeholder groups to develop forward-looking technologies and business strategies. However, the speed and scale in the development of disruptive technologies, such as blockchain, present a challenge for analysts and experts. In this article, we propose an unsupervised systematic patent analysis framework that applies a mixture of cosine-based and density-based outlier analysis to the patent space. A sample of 13 393 blockchain-related patents published between January 2014 and June 2020 is used to test the proposed framework. Specifically, this framework merges cosine and density-based outlier detection methodologies to improve the identification of outliers within clusters of patents. The identified outliers are visualized through an age-outlier technology-opportunity analysis map that represents the different levels of novelty existing in each cluster of the patent sample. The map facilitates companies to better target their R&D efforts and maximize the return of technology investments. Benchmark results show that the proposed outlier detection method improves recall, precision, and f1 score. In addition, the results show that the cluster with a higher percentage of outliers represents the Internet of Things applications of blockchain technology.

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