Decoding mood of the Twitterverse on ESG investing: opinion mining and key themes using machine learning

IF 3.1 Q2 MANAGEMENT
Rachana Jaiswal, Shashank Gupta, Aviral Kumar Tiwari
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引用次数: 0

Abstract

Purpose

Grounded in the stakeholder theory and signaling theory, this study aims to broaden the research agenda on environmental, social and governance (ESG) investing by uncovering public sentiments and key themes using Twitter data spanning from 2009 to 2022.

Design/methodology/approach

Using various machine learning models for text tonality analysis and topic modeling, this research scrutinizes 1,842,985 Twitter texts to extract prevalent ESG investing trends and gauge their sentiment.

Findings

Gibbs Sampling Dirichlet Multinomial Mixture emerges as the optimal topic modeling method, unveiling significant topics such as “Physical risk of climate change,” “Employee Health, Safety and well-being” and “Water management and Scarcity.” RoBERTa, an attention-based model, outperforms other machine learning models in sentiment analysis, revealing a predominantly positive shift in public sentiment toward ESG investing over the past five years.

Research limitations/implications

This study establishes a framework for sentiment analysis and topic modeling on alternative data, offering a foundation for future research. Prospective studies can enhance insights by incorporating data from additional social media platforms like LinkedIn and Facebook.

Practical implications

Leveraging unstructured data on ESG from platforms like Twitter provides a novel avenue to capture company-related information, supplementing traditional self-reported sustainability disclosures. This approach opens new possibilities for understanding a company’s ESG standing.

Social implications

By shedding light on public perceptions of ESG investing, this research uncovers influential factors that often elude traditional corporate reporting. The findings empower both investors and the general public, aiding managers in refining ESG and management strategies.

Originality/value

This study marks a groundbreaking contribution to scholarly exploration, to the best of the authors’ knowledge, by being the first to analyze unstructured Twitter data in the context of ESG investing, offering unique insights and advancing the understanding of this emerging field.

解码 Twitter 上关于 ESG 投资的情绪:利用机器学习挖掘观点和关键主题
目的本研究以利益相关者理论和信号传递理论为基础,旨在利用 2009 年至 2022 年的 Twitter 数据揭示公众情绪和关键主题,从而拓宽有关环境、社会和治理(ESG)投资的研究议程。研究结果Gibbs Sampling Dirichlet Multinomial Mixture 是最佳的主题建模方法,揭示了 "气候变化的物理风险"、"员工健康、安全和福利 "以及 "水资源管理和稀缺性 "等重要主题。RoBERTa是一种基于注意力的模型,在情感分析方面优于其他机器学习模型,揭示了在过去五年中,公众对ESG投资的情感主要发生了积极的转变。研究局限/意义本研究建立了一个替代数据的情感分析和主题建模框架,为今后的研究奠定了基础。前瞻性研究可以通过纳入 LinkedIn 和 Facebook 等其他社交媒体平台的数据来提高洞察力。实践意义利用 Twitter 等平台上有关 ESG 的非结构化数据,为捕捉公司相关信息提供了一种新的途径,补充了传统的自我报告式可持续发展信息披露。社会意义通过揭示公众对 ESG 投资的看法,本研究发现了一些往往无法在传统企业报告中找到的有影响力的因素。据作者所知,本研究首次在 ESG 投资的背景下分析非结构化 Twitter 数据,为学术探索做出了开创性的贡献,提供了独特的见解,推动了对这一新兴领域的理解。
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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来源期刊
CiteScore
6.00
自引率
7.70%
发文量
71
期刊介绍: Management Research Review publishes a wide variety of articles outlining the latest management research. We emphasize management implication from multiple disciplines. We welcome high quality empirical and theoretical studies, literature reviews, and articles with important tactical implications. Published 12 times a year, the journal prides itself on quick publication of the very latest research in general management. The key issues featured include: Business Ethics and Sustainability Corporate Finance Entrepreneurship and Small Business Management Industrial Relations Information and Knowledge Management International Business Human Resource Management Organizational Theory and Behaviour Production and Operations Management Strategic Management and Leadership
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