2024/23 | LEM Working Paper Series | ||||||||||||||||
Green Intelligence: The AI content of green technologies |
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Gianluca Biggi, Martina Iori, Julia Mazzei and Andrea Mina |
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Keywords | |||||||||||||||||
Artificial Intelligence, Environmental innovation, Green Intelligence (GI), Twin transition, Digitalization, Green technologies
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JEL Classifications | |||||||||||||||||
O31, O33, Q55, Q56
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Abstract | |||||||||||||||||
This paper investigates the contribution of Artificial Intelligence
(AI) to environmental innovation. Leveraging a novel dataset of USPTO
patent applications from 1980 to 2019, it explores the domain of Green
Intelligence (GI), defined as the application of AI algorithms to
green technologies. Our analyses reveal an expanding landscape where
AI is indeed used as a general purpose technology to address the
challenge of sustainability and acts as a catalyst for green
innovation. We highlight transportation, energy, and control methods
as key applications of GI innovation. We then examine the impact of
inventions by using measures and econometric tests suitable to
establish 1) how AI and green inventions differ from other
technologies and 2) what specifically distinguishes GI technologies in
terms of quality and value. Results show that AI and green
technologies have a greater impact on follow-on inventions and display
greater originality and generality. GI inventions stand out even
further in these dimensions. However, when we examine the market
response to these inventions, we find positive results only for AI,
indicating a mismatch between the technological vis-à-vis market
potential of green and GI technologies, arguably due to greater
uncertainty in their risk-return profiles.
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