K-MEANS AND AGGLOMERATIVE HIERARCHICAL CLUSTERING ANALYSIS OF ESG SCORES, YEARLY VARIATIONS, AND STOCK RETURNS: INSIGHTS FROM THE ENERGY SECTOR IN EUROPE AND THE UNITED STATES

Ștefan Rusu, Marcel Ioan Boloș, Marius Leordeanu
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Abstract

This study employs k-means clustering and agglomerative hierarchical clustering techniques to visually examine the potential relationship between Environmental Social and Governance (ESG) scores, their year-over-year variations, and annual stock returns for a sample of 34 energy sector companies operating in Europe and the United States. While the agglomerative hierarchical clustering dendrogram suggests two clusters, the elbow method of the k-means algorithm suggests 2-4 clusters. The results indicate that neither ESG scores nor their year-on-year variations had an impact on the annual returns of the stocks. The conclusion is further confirmed by the Pearson correlation coefficient. However, the ESG scores of European energy companies show a tighter dispersion and smaller year-over-year change, making them more predictable ESG score-wise and thus, potentially, more attractive to ESG-driven investors.
esg得分、年度变化和股票回报的k均值和聚集分层聚类分析:来自欧洲和美国能源行业的见解
本研究采用k-均值聚类和聚集层次聚类技术,直观地考察了环境、社会和治理(ESG)得分、其逐年变化与欧洲和美国34家能源行业公司的年度股票回报之间的潜在关系。虽然聚集的分层聚类树形图建议两个簇,但k-means算法的肘形方法建议2-4个簇。结果表明,ESG得分及其年度变化对股票的年收益都没有影响。Pearson相关系数进一步证实了这一结论。然而,欧洲能源公司的ESG得分呈现出更紧密的分散和较小的年度变化,使它们的ESG得分更可预测,因此,对ESG驱动的投资者来说,可能更具吸引力。
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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