مورد إلكتروني

Paradigm Shift in Sustainability Disclosure Analysis

التفاصيل البيبلوغرافية
العنوان: Paradigm Shift in Sustainability Disclosure Analysis : Empowering Stakeholders with Chatreport, a Language Model-Based Tool
المؤلفون: Ni, Jingwei
المساهمون: Bingler, Julia Anna (VerfasserIn); Colesanti Senni, Chiara (VerfasserIn); Kraus, Mathias (VerfasserIn); Gostlow, Glen (VerfasserIn); Schimanski, Tobias (VerfasserIn); Stammbach, Dominik (VerfasserIn); Vaghefi, Saeid (VerfasserIn); Wang, Qian (VerfasserIn); Webersinke, Nicolas (VerfasserIn); Wekhof, Tobias (VerfasserIn); Yu, Tingyu (VerfasserIn); Leippold, Markus (VerfasserIn)
المصدر: 2023
الناشر: [S.l.]: SSRN
اللغة: English
نوع الوثيقة: Elektronische Ressource im Fernzugriff
Manifestation: Monographie [unabhängig ob Stück einer Reihe]
مستخلص: This paper introduces a novel approach to enhance Large Language Models (LLMs) with expert knowledge to automate the analysis of corporate sustainability reports by benchmarking them against the Task Force for Climate-Related Financial Disclosures (TCFD) recommendations. Corporate sustainability reports are crucial in assessing organizations' environmental and social risks and impacts. However, analyzing these reports' vast amounts of information makes human analysis often too costly. As a result, only a few entities worldwide have the resources to analyze these reports, which could lead to a lack of transparency. While AI-powered tools can automatically analyze the data, they are prone to inaccuracies as they lack domain-specific expertise. This paper introduces a novel approach to enhance LLMs with expert knowledge to automate the analysis of corporate sustainability reports. We christen our tool \textsc{chatReport}, and apply it in a first use case to assess corporate climate risk disclosures following the TCFD recommendations. ChatReport results from collaborating with experts in climate science, finance, economic policy, and computer science, demonstrating how domain experts can be involved in developing AI tools. We make our prompt templates, generated data, and scores available to the public to encourage transparency
DOI: 10.2139/ssrn.4476733
رقم الأكسشن: EDSZBW1860104886
قاعدة البيانات: ECONIS