Modeling the link between environmental- social- and governance disclosures and scores: the case of publicly traded companies in the Borsa Istanbul Sustainability Index
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Date
2024
Authors
Mustafa Tevfik Kartal
Serpil Kilic Depren
Ugur Korkut Pata
Dilvin Taskin
Tuba Savli
Journal Title
Journal ISSN
Volume Title
Publisher
SPRINGER
Open Access Color
GOLD
Green Open Access
No
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Publicly Funded
No
Abstract
This study constructs a proposed model to investigate the link between environmental social and governance (ESG) disclosures and ESG scores for publicly traded companies in the Borsa Istanbul Sustainability (XUSRD) index. In this context this study considers 66 companies examining recently structured ESG disclosures for 2022 that were published for the first time as novel data and applying a multilayer perceptron (MLP) artificial neural network algorithm. The relevant results are fourfold. (1) The MLP algorithm has explanatory power (i.e. R2) of 79% in estimating companies' ESG scores. (2) Common environment social and governance pillars have respective weights of 21.04% 44.87% 30.34% and 3.74% in total ESG scores. (3) The absolute and relative significance of each ESG reporting principle for companies' ESG scores varies. (4) According to absolute and relative significance the most effective ESG principle is the common principle followed by social and environmental principles whereas governance principles have less significance. Overall the results demonstrate that applying a linear approach to complete deficient ESG disclosures is inefficient for increasing companies' ESG scores, instead companies should focus on the ESG principles that have the highest relative significance. The findings of this study contribute to the literature by defining the most significant ESG principles for stimulating the ESG scores of companies in the XUSRD index.
Description
Keywords
ESG disclosures, ESG scores, New ESG reporting scheme, Artificial neural network, Borsa Istanbul Sustainability Index, Turkiye, C45, G34, G38, M48, O16, ESG DISCLOSURES, TURKEY, IMPACT, M48, Artificial Neural Network, Borsa Istanbul Sustainability Index, ESG Disclosures, ESG Scores, C45, O16, New ESG Reporting Scheme, G34, Türkiye, G38, Artificial neural network, ESG scores, Public finance, Borsa Istanbul Sustainability Index, New ESG reporting scheme, Türkiye, K4430-4675, ESG disclosures, HG1-9999, Finance
Fields of Science
05 social sciences, 0502 economics and business
Citation
WoS Q
Scopus Q

OpenCitations Citation Count
21
Source
Financial Innovation
Volume
10
Issue
1
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