ESG评级的分化与聚合:一项调查。

Open research Europe Pub Date : 2025-06-30 eCollection Date: 2025-01-01 DOI:10.12688/openreseurope.19238.2
Arianna Agosto, Alessandra Tanda
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引用次数: 0

摘要

目的:本文回顾了环境、社会和治理(ESG)评级差异和汇总方法的现有文献。它凸显了不一致的ESG评级带来的挑战及其对投资决策的影响。设计/方法/方法:本研究对先前的ESG评级研究进行了全面回顾,考察了它们的相关性水平和用于评估企业可持续性的方法。它还研究了用于解决这些不一致性的传统聚合技术和现代机器学习方法。研究发现:研究表明,ESG评级在不同的供应商之间表现出较低的相关性,这引起了人们对其作为投资指标的可靠性的担忧。尽管一些研究提出了先进的汇总方法来提高准确性,但在了解如何有效整合ESG信息以创建可靠的可持续性指标方面仍存在重大差距。原创性:本文对ESG评级方法的现状进行了批判性分析,强调了改进聚合策略的必要性。它强调了未来研究在利用ESG数据制定更一致、更可靠的企业可持续发展指标方面的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Divergence and aggregation of ESG ratings: A survey.

Purpose: This paper reviews the existing literature on Environmental, Social, and Governance (ESG) ratings divergence and aggregation methods. It highlights the challenges posed by inconsistent ESG ratings and their implications for investment decisions.

Design/methodology/approach: The study conducts a comprehensive review of prior research focusing on ESG ratings, examining their correlation levels and the methodologies employed to assess corporate sustainability. It also investigates traditional aggregation techniques and modern machine learning approaches used to address these inconsistencies.

Findings: The review reveals that ESG ratings exhibit a low level of correlation across different providers, raising concerns about their reliability as investment indicators. Although some studies propose advanced aggregation methods to enhance accuracy, significant gaps remain in understanding how to effectively consolidate ESG information to create a dependable sustainability indicator.

Originality: This paper provides a critical analysis of the current state of ESG rating methodologies, emphasizing the need for improved aggregation strategies. It underscores the importance of future research in leveraging ESG data to develop more consistent and reliable measures of corporate sustainability.

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