ESG Confusion and Stock Returns: Tackling the Problem of Noise

Florian Berg, Julian F. Kölbel, A. Pavlova, R. Rigobón
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引用次数: 41

Abstract

How strongly does ESG (environmental, social and governance) performance affect stock returns? Answering this question is difficult because existing measures of performance, ESG ratings, are noisy. To tackle the bias, we propose a noise-correction procedure, in which we instrument ESG ratings with ratings of other ESG rating agencies, as in the classical errors-in-variables problem. The corrected estimates demonstrate that the effect of ESG performance on stock returns is stronger than previously estimated; the standard regression estimates of ESG ratings' impact on stock returns are biased downward by about 60%. Our dataset includes scores of eight ESG rating agencies for firms located in North America, Europe, and Japan. We determine which agencies’ scores are valid instruments (not all of them are) and estimate the noise-to-signal ratio for each ESG rating agency (some of which are very large). Overall, our results suggest that it is advantageous to rely on several complementary ratings. In our sample, stocks with higher ESG performance have higher expected returns. Our model provides several explanations for this finding.
ESG混乱与股票回报:解决噪音问题
ESG(环境、社会和治理)绩效对股票回报的影响有多大?回答这个问题很困难,因为现有的业绩衡量标准——ESG评级——是嘈杂的。为了解决这种偏差,我们提出了一种噪声校正程序,在该程序中,我们将ESG评级与其他ESG评级机构的评级相结合,就像在经典的变量误差问题中一样。修正后的估计表明,ESG绩效对股票收益的影响强于先前的估计;ESG评级对股票收益影响的标准回归估计向下偏差约60%。我们的数据集包括八个ESG评级机构对位于北美、欧洲和日本的公司的评分。我们确定哪些机构的分数是有效的工具(并非所有机构都是),并估计每个ESG评级机构(其中一些非常大)的噪信比。总的来说,我们的结果表明,依赖几个互补评级是有利的。在我们的样本中,ESG表现越好的股票预期收益越高。我们的模型为这一发现提供了几种解释。
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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