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The Journal of Impact and ESG Investing

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Corporate Carbon Footprint: A Machine Learning Predictive Model for Unreported Data

Thibaut Heurtebize, Frederic Chen, François Soupé and Raul Leote de Carvalho
The Journal of Impact and ESG Investing Winter 2022, 3 (2) 36-54; DOI: https://doi.org/10.3905/jesg.2022.1.059
Thibaut Heurtebize
is a senior quantitative analyst in the Quant Research Group at BNP Paribas Asset Management in Paris, France
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Frederic Chen
is a data scientist at BNP Paribas Corporate and Institutional Banking in Paris, France
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François Soupé
is co-head of the Quant Research Group at BNP Paribas Asset Management in Paris, France
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Raul Leote de Carvalho
is deputy head of the Quant Research Group at BNP Paribas Asset Management in Paris, France
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Abstract

The authors propose a model based on statistical learning techniques to predict unreported corporate greenhouse gas emissions that generates considerably better results than existing approaches. The model uses one linear learner and one nonlinear learner only, which reduces its complexity to the minimum required. An iterative approach to detecting and correcting data significantly improves the model predictions. Unlike mainstream approaches, which tend to construct one model for each industry, we construct one single global model that uses industry as a factor. This addresses the problem of lack of breadth or lack of reported data in some sectors and generates practical results even for industries where other approaches have failed. We show results for Scope 1 and Scope 2 corporate carbon emissions. Adapting the framework to Scope 3 will be the focus of a future article.

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The Journal of Impact and ESG Investing: 3 (2)
The Journal of Impact and ESG Investing
Vol. 3, Issue 2
Winter 2022
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Corporate Carbon Footprint: A Machine Learning Predictive Model for Unreported Data
Thibaut Heurtebize, Frederic Chen, François Soupé, Raul Leote de Carvalho
The Journal of Impact and ESG Investing Nov 2022, 3 (2) 36-54; DOI: 10.3905/jesg.2022.1.059

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Corporate Carbon Footprint: A Machine Learning Predictive Model for Unreported Data
Thibaut Heurtebize, Frederic Chen, François Soupé, Raul Leote de Carvalho
The Journal of Impact and ESG Investing Nov 2022, 3 (2) 36-54; DOI: 10.3905/jesg.2022.1.059
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