Predictive and prescriptive analytics for ESG performance evaluation: A case of Fortune 500 companies
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Date
2024
Authors
Gorkem Sariyer
Sachin Kumar Mangla
Soumyadeb Chowdhury
Mert Erkan Sozen
Yigit Kazancoglu
Journal Title
Journal ISSN
Volume Title
Publisher
ELSEVIER SCIENCE INC
Open Access Color
HYBRID
Green Open Access
No
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Publicly Funded
No
Abstract
Given the growing importance of organizations' environmental social and governance (ESG) performance studies employing AI-based techniques to generate insights from ESG data for investors and managers are limited. To bridge this gap this study proposes an AI-based multi-stage ESG performance prediction system consolidating clustering for identifying patterns within ESG data association rule mining for uncovering meaningful relationships deep learning for predictive accuracy and prescriptive analytics for actionable insights. This study is grounded in the big data analytics capability view that has emerged from the dynamic capabilities theory. The model is validated using an ESG dataset of 470 Fortune listed 500 companies obtained from the Refinitiv database. The model offers practical guidance for decision-makers to maintain or enhance their ESG scores crucial in a business landscape where ESG metrics significantly affect investor choices and public image.
Description
Keywords
Deep learning, Predictive analytics, Prescriptive analytics, ESG performance, Sustainability, Decision-making, BIG DATA ANALYTICS, SOCIAL-RESPONSIBILITY, DYNAMIC CAPABILITIES, SUSTAINABILITY, BUSINESS, ENVIRONMENT, CSR
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OpenCitations Citation Count
14
Source
Journal of Business Research
Volume
181
Issue
Start Page
114742
End Page
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Citations
CrossRef : 4
Scopus : 29
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Mendeley Readers : 186
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