Do past ESG scores efficiently predict future ESG performance?

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Date

2025

Authors

Dilvin Taşkın
Gorkem Sariyer
Ece Acar
Efe Caglar Cagli

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Volume Title

Publisher

Elsevier Ltd

Open Access Color

Green Open Access

No

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No
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Top 10%
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Average
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Top 10%

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Abstract

Given the effects of Environmental Social and Governance (ESG) scores on financial performance and stock returns the prediction of future ESG scores is highly crucial. ESG scores are calculated using an enormous number of variables related to the sustainability practices of firms, thus it is impractical for investors to come up with predictions of ESG performance. This paper aims to fill this gap by using only the past score-based and rating-based ESG performance as the determinant of future ESG performance using four machine learning-based algorithms, decision tree (DT) random-forest (RF) k-nearest neighbor (KNN) and logistic regression (LR). The proposed model is validated in BIST sustainability index companies. The results suggest that past ESG grade-based and numerical scores can be used as a determinant of future ESG performance. The results prove that a simple indicator could serve to predict future ESG scores rather than complex data alternatives. Using data from BIST sustainability index companies in Turkey the findings demonstrate that past ESG grades and scores are reliable predictors of future ESG performance offering a simple yet effective alternative to complex data-driven methods. This study not only contributes to advancing sustainable finance practices but also provides practical tools for emerging markets like Turkey to align corporate strategies with global sustainability standards. The methodological contributions also have broader relevance for international financial markets. © 2024 Elsevier B.V. All rights reserved.

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Keywords

Decision Tree, Esg Score Prediction, K-nearest Neighbor, Logistic Regression, Machine Learning Algorithms, Random Forest

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OpenCitations Citation Count
5

Source

Research in International Business and Finance

Volume

74

Issue

Start Page

102706

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CrossRef : 5

Scopus : 11

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Mendeley Readers : 96

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Sustainable Development Goals

INDUSTRY, INNOVATION AND INFRASTRUCTURE9
INDUSTRY, INNOVATION AND INFRASTRUCTURE
LIFE ON LAND15
LIFE ON LAND