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학술논문KSII Transactions on Internet and Information Systems2024.04 발행

CORRECT? CORECT!: Classification of ESG Ratings with Earnings Call Transcript

CORRECT? CORECT!: Classification of ESG Ratings with Earnings Call Transcript

Haein Lee(Sungkyunkwan University); Hae Sun Jung(Sungkyunkwan University); Heungju Park(Sungkyunkwan University); Jang Hyun Kim(Sungkyunkwan University)

18권 4호, 1090~1100쪽

초록

While the incorporating ESG indicator is recognized as crucial for sustainability and increased firm value, inconsistent disclosure of ESG data and vague assessment standards have been key challenges. To address these issues, this study proposes an ambiguous text-based automated ESG rating strategy. Earnings Call Transcript data were classified as E, S, or G using the Refinitiv-Sustainable Leadership Monitor's over 450 metrics. The study employed advanced natural language processing techniques such as BERT, RoBERTa, ALBERT, FinBERT, and ELECTRA models to precisely classify ESG documents. In addition, the authors computed the average predicted probabilities for each label, providing a means to identify the relative significance of different ESG factors. The results of experiments demonstrated the capability of the proposed methodology in enhancing ESG assessment criteria established by various rating agencies and highlighted that companies primarily focus on governance factors. In other words, companies were making efforts to strengthen their governance framework. In conclusion, this framework enables sustainable and responsible business by providing insight into the ESG information contained in Earnings Call Transcript data.

Abstract

While the incorporating ESG indicator is recognized as crucial for sustainability and increased firm value, inconsistent disclosure of ESG data and vague assessment standards have been key challenges. To address these issues, this study proposes an ambiguous text-based automated ESG rating strategy. Earnings Call Transcript data were classified as E, S, or G using the Refinitiv-Sustainable Leadership Monitor's over 450 metrics. The study employed advanced natural language processing techniques such as BERT, RoBERTa, ALBERT, FinBERT, and ELECTRA models to precisely classify ESG documents. In addition, the authors computed the average predicted probabilities for each label, providing a means to identify the relative significance of different ESG factors. The results of experiments demonstrated the capability of the proposed methodology in enhancing ESG assessment criteria established by various rating agencies and highlighted that companies primarily focus on governance factors. In other words, companies were making efforts to strengthen their governance framework. In conclusion, this framework enables sustainable and responsible business by providing insight into the ESG information contained in Earnings Call Transcript data.

발행기관:
한국인터넷정보학회
DOI:
http://dx.doi.org/10.3837/tiis.2024.04.015
분류:
컴퓨터학

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CORRECT? CORECT!: Classification of ESG Ratings with Earnings Call Transcript | KSII Transactions on Internet and Information Systems 2024 | AskLaw | 애스크로 AI