DocumentCode :
3658232
Title :
Unsupervised learning based patent landscapes using full-text patent data
Author :
Arho Suominen;Hannes Toivanen
Author_Institution :
VTT Technical Research Centre of Finland, Espoo, Finland
fYear :
2015
Firstpage :
2195
Lastpage :
2203
Abstract :
The complexity technologies require that companies have in-depth knowledge of the nature and effect of knowledge - its depth and breadth. Companies need to master expanding technological knowledge bases creating tensions for MOT. We examine how big data in patent landscaping creates insights into MOT. Using big data to manage Competitive Technical Intelligence, companies can foster new forms of adaptive learning processes in MOT. This however requires that managers augment human judgment with machine-learning tools, prompting challenges to management traditions. We demonstrate how unsupervised learning creates insight into MOT by identifying topical knowledge foci and showing the dynamics of knowledge domains among companies. Using unsupervised learning and network analysis; we show how a semantic analysis leads to the identification of opportunities in complex environments. We illustrate this using a case in globally operating telecommunication companies using a full-text copy of USPTO-database with approximately 6 million patents data. Our results show the landscape of the companies and the underlying knowledge embedded in the companies. We discuss how managers can evaluate their technological knowledge against competitors, balancing current needs with the adoption of new knowledge. We further discuss how a semantic analysis can lead to the discovery of latent patterns and identification of opportunities.
Keywords :
"Patents","Companies","Unsupervised learning","Big data","Industries","Semantics","Data mining"
Publisher :
ieee
Conference_Titel :
Management of Engineering and Technology (PICMET), 2015 Portland International Conference on
Type :
conf
DOI :
10.1109/PICMET.2015.7273139
Filename :
7273139
Link To Document :
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