Corporate governance performance ratings with machine learning

Jan Svanberg, Tohid Ardeshiri, Isak Samsten, Peter Öhman, P. Neidermeyer, Tarek Rana, N. Semenova, M. Danielson
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引用次数: 4

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.
利用机器学习进行公司治理绩效评级
我们使用机器学习和横断面研究设计来预测治理争议,并制定环境、社会、治理(ESG)指标的治理组成部分的衡量标准。基于2517家公司10年间的综合治理数据,并研究了9种机器学习算法,我们发现治理争议可以以高预测性能进行预测。与传统的ESG评级相比,我们提出的治理评级方法有两个独特的优势:它对公司遵守治理责任的情况进行评级,并且具有预测有效性。我们的研究为当今金融业可能面临的最大挑战提供了一个解决方案:如何有效而准确地评估一家公司的可持续性。在本研究之前,ESG评级行业和文献并没有提供证据证明广泛采用的治理评级是有效的。本研究描述了基于公司对治理责任的遵从性开发治理绩效评级的唯一方法,并且有证据表明该方法具有预测有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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