As an important step to fulfill the Paris Agreement and achieve net-zero emissions by 2050, the European Commission adopted the most ambitious package of climate impact measures in April 2021 to improve the flow of capital towards sustainable activities. For these and other international measures to be successful, reliable data is key. The ability to see the carbon footprint of companies around the world will be critical for investors to comply with the measures. However, with only a small portion of companies volunteering to disclose their greenhouse gas (GHG) emissions, it is nearly impossible for investors to align their investment strategies with the measures. By training a machine learning model on disclosed GHG emissions, we are able to estimate the emissions of other companies globally who do not disclose their emissions. In this paper, we show that our model provides accurate estimates of corporate GHG emissions to investors such that they are able to align their investments with the regulatory measures and achieve net-zero goals.
翻译:作为履行《巴黎协定》和到2050年实现净零排放的一个重要步骤,欧盟委员会于2021年4月通过了最雄心勃勃的一揽子气候影响措施,以改善流向可持续活动的资本流量。为了使这些措施和其他国际措施取得成功,可靠的数据是关键。看到世界各地公司的碳足迹的能力对于投资者遵守这些措施至关重要。然而,只有一小部分公司自愿披露其温室气体排放量,投资者几乎不可能使其投资战略与这些措施保持一致。通过对披露的温室气体排放量进行机器学习模型的培训,我们能够估计全球其他不披露其排放量的公司的排放。我们在本文件中显示,我们的模型向投资者提供了公司温室气体排放量的准确估计数,以便投资者能够使其投资与监管措施相一致,并实现净零目标。