학술논문

Corporate governance performance ratings with machine learning
Document Type
Source
International Journal of Intelligent Systems in Accounting, Finance & Management. 29(1):50-68
Subject
artificial intelligence
ESG
governance controversies
machine learning
performance of ESG ratings
prediction
socially responsible investment
Language
English
ISSN
1055-615X
1099-1174
Abstract
We use machine learning with a cross-sectional research design to predict governance controversies and to develop a measure of the governance component of the environmental, social, governance (ESG) metrics. Based on comprehensive governance data from 2,517 companies over a period of 10 years and investigating nine machine-learning algorithms, we find that governance controversies can be predicted with high predictive performance. Our proposed governance rating methodology has two unique advantages compared with traditional ESG ratings: it rates companies' compliance with governance responsibilities and it has predictive validity. Our study demonstrates a solution to what is likely the greatest challenge for the finance industry today: how to assess a company's sustainability with validity and accuracy. Prior to this study, the ESG rating industry and the literature have not provided evidence that widely adopted governance ratings are valid. This study describes the only methodology for developing governance performance ratings based on companies' compliance with governance responsibilities and for which there is evidence of predictive validity.