Big data analytics on patents for innovation public policies
Files
Date
2021
Embargo
Advisor
Coadvisor
Journal Title
Journal ISSN
Volume Title
Publisher
Wiley
Language
English
Alternative Title
Abstract
This study seeks to answer the following research question: “What factors can
explain the number of patent filing requests made by residents in Brazil at patent
offices in Brazil, the United States, Europe, and triadic patent families?”. The methods
used in this research are quantitative, using big data from private and public investments
in Science and Technology, and about patent deposit numbers in Brazil from
2000 to 2017. A model of linear regression was performed and explains how these
investments in Science and Technology influence patent deposit numbers. The
results of this research study point towards the importance of universities, up and
beyond the traditional training and education aspect of university activity. The importance
of public and private innovation investments is also shown to be important.
This study shows that the patent registrations in the different regions under analysis
are affected by different factors. There is thus no single formula towards the creation
of innovation output and governments would do well to continue to invest in higher
education while also investing in public research and development activities. Additionally,
and not least important, private entities should be continually encouraged to
make innovation investments and favourable government policies need to thus exist
for this to happen. Finally, the low numbers regarding patent filings in Brazil may be
linked to institutional deficiencies in the country. Patent breaches may be difficult to
punish, and the judicial system may be slow and untrustworthy, compared to the
United States and to Europe—leading to diminished patent registrations in Brazil. A
set of implications and recommendations for policy derived from this study and will
be strategic for policymakers.
Keywords
Analytics, Innovation output, Patents, Public policies, Residents in Brazil
Document Type
Journal article
Publisher Version
10.1111/exsy.12673
Dataset
Citation
Sousa, M. J., Jamil, G., Walter, C. E., Au-Yong-Oliveira, M., & Moreira, F. (2021). Big data analytics on patents for innovation public policies. Expert Systems, e12673, (1-10). doi: 10.1111/exsy.12673. Disponível no Repositório UPT, http://hdl.handle.net/11328/3418
Identifiers
TID
Designation
Access Type
Open Access