Predicting ESG Controversies in Banks Using Machine Learning Techniques

IF 8.3 2区 管理学 Q1 BUSINESS
Anna Rita Dipierro, Fernando Jimenéz Barrionuevo, Pierluigi Toma
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Abstract

Mistreating environmental, social, and governance (ESG) concerns has serious drawbacks in organizations of any type, and even more in banks. Deeply revolutionized in its taxonomy of risks, banking sector is herein evaluated in its integration of ESG parameters that, when lacking, leads to ESG-related controversies (ESGC). Thereby, this research approaches the almost uncharted territory of ESGC in banks, by means of machine learning. Aiming at selecting the set of features that are relevant in ESGC prediction, techniques belonging to feature selection are used over a real panel dataset of 140 banks evaluated for a wide set of features over 2011–2020 time-span. We find the power that governance-employees dynamics detains in making out-of-sample predictions and forecasting of ESGC banks' risk. Finally, we provide implications for researchers, practitioners and regulators, further confirming the need for the rapid inroads that machine learning tools are actually making in the banking toolkit and in the regulatory technology.

Abstract Image

使用机器学习技术预测银行ESG争议
对环境、社会和治理(ESG)问题的不当关注在任何类型的组织中都有严重的缺陷,在银行中更是如此。银行业在其风险分类方面发生了深刻的革命,在此对其ESG参数的整合进行评估,如果缺乏这些参数,则会导致与ESG相关的争议(ESGC)。因此,本研究通过机器学习接近了银行ESGC几乎未知的领域。为了选择与ESGC预测相关的特征集,对140家银行的真实面板数据集使用了特征选择技术,对2011-2020年时间跨度内的广泛特征集进行了评估。我们发现治理-员工动态在样本外预测和ESGC银行风险预测中具有重要作用。最后,我们为研究人员、从业人员和监管机构提供了启示,进一步证实了机器学习工具在银行工具包和监管技术中实际取得快速进展的必要性。
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来源期刊
CiteScore
17.20
自引率
16.30%
发文量
189
期刊介绍: Corporate Social Responsibility and Environmental Management is a journal that publishes both theoretical and practical contributions related to the social and environmental responsibilities of businesses in the context of sustainable development. It covers a wide range of topics, including tools and practices associated with these responsibilities, case studies, and cross-country surveys of best practices. The journal aims to help organizations improve their performance and accountability in these areas. The main focus of the journal is on research and practical advice for the development and assessment of social responsibility and environmental tools. It also features practical case studies and evaluates the strengths and weaknesses of different approaches to sustainability. The journal encourages the discussion and debate of sustainability issues and closely monitors the demands of various stakeholder groups. Corporate Social Responsibility and Environmental Management is a refereed journal, meaning that all contributions undergo a rigorous review process. It seeks high-quality contributions that appeal to a diverse audience from various disciplines.
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