climateBUG: A data-driven framework for analyzing bank reporting through a climate lens
Journal article, 2024

This paper applies computational linguistics learning methods to the banking industry and climate change fields. We introduce our data-driven framework, climateBUG, with the aim of detecting latent information about how banks discuss their activities related to climate change using natural language processing (NLP). This framework consists of an ingestion pipeline, a configurable database, and a set of API’s. In addition, climateBUG offers two standalone components, namely a unique annotated corpus of approximately 1.1M statements from EU banks’ annual and sustainability reporting and a deep learning model adapted to the semantics of the corpus. When benchmarking on classification performance, our model outperforms other models with similar scopes due to its stronger domain relevance. We also provide examples of how the framework can be applied from a user perspective.

natural language processing

deep learning

Annual reporting

sustainability

climate change

Finance & accounting

Author

Yinan Yu

Chalmers, Computer Science and Engineering (Chalmers), Functional Programming

Samuel Scheidegger

Asymptotic AB

Jasmine Elliott

University of Gothenburg

Åsa Löfgren

University of Gothenburg

Expert Systems with Applications

0957-4174 (ISSN)

Vol. 239 122162

Subject Categories

Other Computer and Information Science

Language Technology (Computational Linguistics)

Economics

Computer Science

Driving Forces

Sustainable development

DOI

10.1016/j.eswa.2023.122162

More information

Latest update

11/29/2023