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📄 Abstract
Abstract: This paper introduces Natural Language Processing for identifying ``true''
green patents from official supporting documents. We start our training on
about 12.4 million patents that had been classified as green from previous
literature. Thus, we train a simple neural network to enlarge a baseline
dictionary through vector representations of expressions related to
environmental technologies. After testing, we find that ``true'' green patents
represent about 20\% of the total of patents classified as green from previous
literature. We show heterogeneity by technological classes, and then check that
`true' green patents are about 1\% less cited by following inventions. In the
second part of the paper, we test the relationship between patenting and a
dashboard of firm-level financial accounts in the European Union. After
controlling for reverse causality, we show that holding at least one ``true''
green patent raises sales, market shares, and productivity. If we restrict the
analysis to high-novelty ``true'' green patents, we find that they also yield
higher profits. Our findings underscore the importance of using text analyses
to gauge finer-grained patent classifications that are useful for policymaking
in different domains.
Authors (3)
Lapo Santarlasci
Armando Rungi
Antonio Zinilli
Key Contributions
Applies NLP to identify 'true' green patents using vector representations and a simple neural network, finding they constitute only 20% of previously classified green patents. It further demonstrates that holding 'true' green patents positively impacts firm sales, market share, and productivity.
Business Value
Provides insights for companies and investors on the value of genuine green innovation, guiding R&D investment and strategic decisions towards more impactful environmental technologies.