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Nº Sistema 000475761
Autor LinkAlonso-Robisco, Andres
LinkBas, Javier
LinkCarbó, José Manuel
Linkde Juan, Aranzazu
LinkMarqués, José Manuel
Título Where and how machine learning plays a role in climate finance research [Recurso electrónico] / Andres Alonso-Robisco, Javier Bas, Jose Manuel Carbo, Aranzazu de Juan and Jose Manuel Marques.
Publicado en Journal of Sustainable Finance and Investment [Artículos], v.15, issue 2, April 2025, pp.456-497
Nota general Artículo de revista
Resumen The financial sector, by mobilizing capital, is fundamental to adapt and mitigate the impact of climate change in the economy. This has led to the emergence of a new research field, climate finance, where experts are starting to harness Machine Learning (ML) as a tool to solve new problems, due to the need to use big datasets and to model complex non-linear relationships. We propose a review of the academic literature that goes beyond the existing bibliometric studies in the field, with the aim of identifying relevant application domains of this technology to inform ML experts where and how their modeling expertise may add value in climate finance. To achieve this, we first assemble a corpus of texts from three scientific databases and use Latent Dirichlet Allocation (LDA) for topic modeling, to uncover seven research areas which we label as: natural hazards, biodiversity, agricultural risk, carbon markets, energy economics, Environmental, Social and Governance (ESG) factors & investing, and climate data. Second, we perform an analysis of publication trends, which confirms that ML is growing both in breadth and depth in climate finance, in particular topics related to energy economics, ESG factors and climate data. Interestingly, some methods stand out in each area, based on data characteristics and modeling requirements. [Resumen de autor] [eng]
Restricciones Acceso público y gratuito a la versión electrónica en Internet
Acceso electrónico  Acceso al texto completo. 
Relacionado con Documentos de Trabajo / Banco de España; 2310
Clasificación LinkR81-Big data e inteligencia artificial. 
LinkK2-Recursos naturales y medio ambiente. 
Materia LinkSostenibilidad medioambiental
LinkFinanzas climáticas
LinkRevisiones bibliográficas
LinkInteligencia artificial

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