Autori
Quatraro, FrancescoFusillo, FabrizioOrsatti, GianlucaManera, MariaTitolo
Addressing the identification of Critical Raw Material Patents Using Pretrained and Large Language Models Periodico
Università degli studi di Torino. Dip. Di Economia e Statistica Cognetti de Martiis. Working paper seriesAnno:
2025 - Volume:
5 - Fascicolo:
5 - Pagina iniziale:
1 - Pagina finale:
51In modern technologies, critical raw materials (CRMs) have gained attention
due to supply chain risks, environmental concerns, and their essential role in
industries such as renewable energy, electric vehicles, and advanced electronics.
However, identifying and classifying CRM-related patents, and thus technologies,
remains challenging due to the lack of specific classification systems. Traditional
approaches, such as keyword-based searches and Cooperative Patent Classification (CPC) and International Patent Classification (IPC) codes, suffer from inaccuracies due to evolving terminology, ambiguous context, as well as the inability
in recognizing alternative material usage. This study proposes a novel methodology leveraging advanced natural language processing (NLP) tools to overcome
these limitations. Our approach addresses two key objectives: (1) distinguishing
between substitutable and non-substitutable CRMs in patent abstracts through
the GPT-3.5-turbo-16k model and (2) identifying CRM-related patents via a
fine-tuned BERT for Patents model. Our findings reveal distinct geographical,
technological, and temporal patterns in CRM-related innovation, emphasizing
the significance of NLP techniques in overcoming traditional classification challenges. This research offers policymakers and industry stakeholders valuable
insights into CRM innovation trends, supporting strategic decision-making for
sustainable resource management.
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