Abstract
Environment-related risks affect assets in various sectors of the global economy, as well as social and governance aspects, giving birth to what is known as ESG investments. Sustainable and responsible finance has become a major aim for asset managers who are regularly dealing with the measurement and management of ESG risks. To this purpose, Financial Institutions and Rating Agencies have created an ESG score aimed to provide disclosure on the environment, social, and governance (corporate social responsibilities) metrics. CSR/ESG ratings are becoming quite popular even if highly questioned in terms of reliability. Asset managers do not always believe that markets consistently and correctly price climate risks into company valuations, in these cases ESG ratings, when available, provide an important tool in the company’s fundraising process or on the shares’ return. Assuming we can choose a reliable set of CSR/ESG ratings, we aim to assess how structural data- balance sheet items- may affect ESG scores assigned to regularly traded stocks. Using a Random Forest algorithm, we investigate how structural data affect the Thomson Reuters Refinitiv ESG scores for the companies which constitute the STOXX 600 Index. We find that balance sheet data provide a crucial element to explain ESG scores.
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In science, computing, and engineering, a black box is a device, system, or object which can be viewed in terms of its inputs and outputs, without any knowledge of its internal workings. Its implementation is opaque or “black”. Source: Investopedia.
For the target variables E.Score, S.Score and G.Score, the algorithm’s parameters are set respectively as follows: mtry = 9, 9, 10 and nodesize = 1, 1, 1.
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D’Amato, V., D’Ecclesia, R. & Levantesi, S. ESG score prediction through random forest algorithm. Comput Manag Sci 19, 347–373 (2022). https://doi.org/10.1007/s10287-021-00419-3
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DOI: https://doi.org/10.1007/s10287-021-00419-3