Identifying Corporate Sustainability Issues by Analyzing Shareholder Resolutions: A Machine-Learning Text Analytics Approach

Corporations have embraced the idea of corporate environmental, social, and governance (ESG) under the general framework of sustainability. Studies have measured and analyzed the impact of internal sustainability efforts on the performance of individual companies, policies, and projects. This explor...

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Main Authors: Viju Raghupathi, Jie Ren, Wullianallur Raghupathi
Format: Article
Language:English
Published: MDPI AG 2020-06-01
Series:Sustainability
Subjects:
Online Access:https://www.mdpi.com/2071-1050/12/11/4753
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spelling doaj-ed557f0235b6440cba73b7cc893f5ff02020-11-25T02:51:58ZengMDPI AGSustainability2071-10502020-06-01124753475310.3390/su12114753Identifying Corporate Sustainability Issues by Analyzing Shareholder Resolutions: A Machine-Learning Text Analytics ApproachViju Raghupathi0Jie Ren1Wullianallur Raghupathi2Koppelman School of Business, Brookyn College of the City University of New York, Brookyn, NY 11210, USAGabelli School of Business, Fordham University, New York, NY 10023, USAGabelli School of Business, Fordham University, New York, NY 10023, USACorporations have embraced the idea of corporate environmental, social, and governance (ESG) under the general framework of sustainability. Studies have measured and analyzed the impact of internal sustainability efforts on the performance of individual companies, policies, and projects. This exploratory study attempts to extract useful insight from shareholder sustainability resolutions using machine learning-based text analytics. Prior research has studied corporate sustainability disclosures from public reports. By studying shareholder resolutions, we gain insight into the shareholders’ perspectives and objectives. The primary source for this study is the Ceres sustainability shareholder resolution database, with 1737 records spanning 2009–2019. The study utilizes a combination of text analytic approaches (i.e., word cloud, co-occurrence, row-similarities, clustering, classification, etc.) to extract insights. These are novel methods of transforming textual data into useful knowledge about corporate sustainability endeavors. This study demonstrates that stakeholders, such as shareholders, can influence corporate sustainability via resolutions. The incorporation of text analytic techniques offers insight to researchers who study vast collections of unstructured bodies of text, improving the understanding of shareholder resolutions and reaching a wider audience.https://www.mdpi.com/2071-1050/12/11/4753machine learningshareholder resolutionsustainabilitysustainability reportingtext analytics
collection DOAJ
language English
format Article
sources DOAJ
author Viju Raghupathi
Jie Ren
Wullianallur Raghupathi
spellingShingle Viju Raghupathi
Jie Ren
Wullianallur Raghupathi
Identifying Corporate Sustainability Issues by Analyzing Shareholder Resolutions: A Machine-Learning Text Analytics Approach
Sustainability
machine learning
shareholder resolution
sustainability
sustainability reporting
text analytics
author_facet Viju Raghupathi
Jie Ren
Wullianallur Raghupathi
author_sort Viju Raghupathi
title Identifying Corporate Sustainability Issues by Analyzing Shareholder Resolutions: A Machine-Learning Text Analytics Approach
title_short Identifying Corporate Sustainability Issues by Analyzing Shareholder Resolutions: A Machine-Learning Text Analytics Approach
title_full Identifying Corporate Sustainability Issues by Analyzing Shareholder Resolutions: A Machine-Learning Text Analytics Approach
title_fullStr Identifying Corporate Sustainability Issues by Analyzing Shareholder Resolutions: A Machine-Learning Text Analytics Approach
title_full_unstemmed Identifying Corporate Sustainability Issues by Analyzing Shareholder Resolutions: A Machine-Learning Text Analytics Approach
title_sort identifying corporate sustainability issues by analyzing shareholder resolutions: a machine-learning text analytics approach
publisher MDPI AG
series Sustainability
issn 2071-1050
publishDate 2020-06-01
description Corporations have embraced the idea of corporate environmental, social, and governance (ESG) under the general framework of sustainability. Studies have measured and analyzed the impact of internal sustainability efforts on the performance of individual companies, policies, and projects. This exploratory study attempts to extract useful insight from shareholder sustainability resolutions using machine learning-based text analytics. Prior research has studied corporate sustainability disclosures from public reports. By studying shareholder resolutions, we gain insight into the shareholders’ perspectives and objectives. The primary source for this study is the Ceres sustainability shareholder resolution database, with 1737 records spanning 2009–2019. The study utilizes a combination of text analytic approaches (i.e., word cloud, co-occurrence, row-similarities, clustering, classification, etc.) to extract insights. These are novel methods of transforming textual data into useful knowledge about corporate sustainability endeavors. This study demonstrates that stakeholders, such as shareholders, can influence corporate sustainability via resolutions. The incorporation of text analytic techniques offers insight to researchers who study vast collections of unstructured bodies of text, improving the understanding of shareholder resolutions and reaching a wider audience.
topic machine learning
shareholder resolution
sustainability
sustainability reporting
text analytics
url https://www.mdpi.com/2071-1050/12/11/4753
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