Towards unearthing neglected climate innovations from scientific literature using Large Language Models
- URL: http://arxiv.org/abs/2411.10055v1
- Date: Fri, 15 Nov 2024 09:17:40 GMT
- Title: Towards unearthing neglected climate innovations from scientific literature using Large Language Models
- Authors: César Quilodrán-Casas, Christopher Waite, Nicole Alhadeff, Diyona Dsouza, Cathal Hughes, Larissa Kunstel-Tabet, Alyssa Gilbert,
- Abstract summary: This study employs a curated dataset sourced from OpenAlex, a comprehensive repository of scientific papers.
We evaluate title-abstract pairs from scientific papers on seven dimensions, covering climate change mitigation potential, stage of technological development, and readiness for deployment.
The outputs of the language models are then compared with human evaluations to assess their effectiveness in identifying promising yet overlooked climate innovations.
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- Abstract: Climate change poses an urgent global threat, needing the rapid identification and deployment of innovative solutions. We hypothesise that many of these solutions already exist within scientific literature but remain underutilised. To address this gap, this study employs a curated dataset sourced from OpenAlex, a comprehensive repository of scientific papers. Utilising Large Language Models (LLMs), such as GPT4-o from OpenAI, we evaluate title-abstract pairs from scientific papers on seven dimensions, covering climate change mitigation potential, stage of technological development, and readiness for deployment. The outputs of the language models are then compared with human evaluations to assess their effectiveness in identifying promising yet overlooked climate innovations. Our findings suggest that these LLM-based models can effectively augment human expertise, uncovering climate solutions that are potentially impactful but with far greater speed, throughput and consistency. Here, we focused on UK-based solutions, but the workflow is region-agnostic. This work contributes to the discovery of neglected innovations in scientific literature and demonstrates the potential of AI in enhancing climate action strategies.
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