Empirically assessing corporate adaptation and resilience disclosure using AI

Martín, R. S., Ranger, N., Schimanski, T. & Leippold, M. (2025). Empirically assessing corporate adaptation and resilience disclosure using AI. (Grantham Research Institute on Climate Change and the Environment Working Papers 430). Grantham Research Institute on Climate Change and the Environment.
Copy

The extent to which firms are adapting and building resilience to environmental change is crucial information for financial institutions, regulators and governments. While corporates’ physical climate risk exposure of their assets to environmental change can be calculated using models, additional information is needed to evaluate their vulnerability to physical climate change, how well they are adapting and broader alignment with societal adaptation and resilience (A&R) goals. This paper empirically evaluates the extent of A&R-related information in current corporate sustainability reports to provide such insights. We build on established sustainability disclosure frameworks and develop an A&R disclosure framework that we combine with the latest advances in large language models to assess S&P 500 company sustainability reports. We prove that corporate A&R disclosure is lacking, particularly around risks, metrics and targets, underlining the need to consider other data sources when assessing firm-level risks and contributions to societal A&R goals.

picture_as_pdf

subject
Published Version

Download

Export as

EndNote BibTeX Reference Manager Refer Atom Dublin Core JSON Multiline CSV
Export