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Wednesday 24 March 2021 11:25am

Quyen Nguyen (with Associate Professor Ivan Diaz-Rainey, Dr Duminda Kuruppuarachchi), a PhD Student in the Department of Accountancy and Finance, has had accepted for publication the article “Predicting corporate carbon footprints for climate finance risk analyses: A machine learning approach” in Energy Economics (ABDC-A*).

doi.org/10.1016/j.eneco.2021.105129

Abstract

Corporations have come under pressure from investors and other stakeholders to disclose and reduce their greenhouse gas emissions (GHG). Corporate GHG footprints, proxying for transition risk, are dominated by car-bon emissions from energy use. Thus the growing attention on the carbon emissions of corporations from, principally, their energy use, motivates firms to invest in energy efficiency and renewable energy. However, only a subset of corporations disclose their GHG/carbon footprints. This paper uses machine learning to improve the prediction of corporate carbon emissions for risk analyses by investors. We introduce a two-step framework that applies a Meta-Elastic Net learner to combine predictions from multiple base-learners as the best emission prediction approach. It results in an accuracy gain based on mean absolute error of up to 30% as compared with the existing models. We also find that prediction accuracy can be further improved by incorporating additional predictors (energy production/consumption data) and additional firm disclosures in particular sectors and regions. This provides an indication of where policymakers should concentrate their efforts for greater level of disclosure.

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