Using non-supervised machine learning to generate a knowledge ontology for patent analytics

Amy J.C. Trappey*, Charles V. Trappey, C. H. Zou

*Corresponding author for this work

研究成果: Conference article同行評審

摘要

The growth of patenting activities has increased as a result of enterprises seeking greater intellectual property protection and commercialization using global patent systems and legal conventions for sales or licensing. This research develops a novel system to intelligently generate the knowledge ontology for patent analytics. The intelligent system automatically tracks patent topics and searches related patents across multiple patent databases. The first step is to cluster the domain patents into key groups without supervision. Latent Dirichlet Allocation (LDA), an unsupervised machine learning approach, is modified to identify key topics and to match patents with similar topic categories. The system extracts key terms and constructs the ontology. The technical and functional terms are depicted using links across ontology nodes that enable enterprises to target research and development investments that best support their patent portfolios and market investment strategies.

原文English
期刊Proceedings of International Conference on Computers and Industrial Engineering, CIE
2018-December
出版狀態Published - 1 一月 2018
事件48th International Conference on Computers and Industrial Engineering, CIE 2018 - Auckland, New Zealand
持續時間: 2 十二月 20185 十二月 2018

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