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Title: BERT goes sustainable : an NLP approach to ESG financing
BNDES Authors: Ruberg, Nicolaas
Advisor(s): Torroni, Paolo
Almeida, Vanessa da Rocha Santos
Keywords: Banco Nacional de Desenvolvimento Econômico e Social (Brasil) - Financiamento
Brazilian Development Bank - Financing
Global Reporting Initiative
Lingüística - Processamento de dados
Computational linguistics
Responsabilidade social da empresa
Social responsibility of business
Governança corporativa
Corporate governance
Desenvolvimento sustentável
Sustainable development
Automação
Automation
Processamento de linguagem natural (Computação)
Natural language processing (Computer science)
Issue Date: 2021
Place: Bolonha
Abstract: Environmental, Social, and Governance (ESG) factors are a strategic topic for investors and financing institutions like the Brazilian Development Bank (BNDES). Currently, the Brazilian bank’s experts are developing a framework based on those factors to assess companies' sustainable financing. In this work, we identify an opportunity to use Natural Language Processing (NLP) in this development. This opportunity arises from the observation that a critical document to the ESG analysis is the company annual activity report. This document undergoes a manual screening, and later it is decomposed, and its parts are redirected to specialists’ analysis. Therefore, the screening process would largely benefit from NLP to automate the classification of text excerpts from the annual report. The proposed automation solution is based on different Bidirectional Encoder Representations from Transformers (BERT) architectures, which rely on the attention mechanism to achieve optimal results on sentence-level analysis tasks. We devised a text classification task to enable the analysis of excerpts from the annual activity report of companies considering three categories, according to the ESG reference standard, the Global Reporting Initiative (GRI). We produced the training and validation sets from Brazilian companies’ annual reports from the GRI database to validate our experiments. To establish a benchmark, we implemented a baseline solution using a classic NLP approach, Naïve Bayes, which got a 51% accuracy and 50,33% F1-score. RoBERTa and BERT-large achieved 88% accuracy and almost 85% F1- score, the best results obtained from our experiments with different BERT architectures. Also, Albert showed to be a possible alternative for limited memory devices, with 85% accuracy and 78.5924% F1-score. Finally, we experimented with a multilingual setup that would be interesting for a scenario where the BNDES wants a more generic model that can analyze English or Portuguese annual reports. Bert multilingual model reached almost 86% accuracy and 81.18% F1-score. The proposed methodology to the GRI text classification and the BERT model selection for the ESG analysis of annual activity reports are significant contributions presented in this dissertation, aiming to improve the BNDES ESG framework substantially.
Description: Inclui bibliografia: p. 54-57 e notas de rodapé
Citation: RUBERG, Nicolaas. BERT goes sustainable : an NLP approach to ESG financing. Bologna, 2021. 57 f. Dissertação (Mestrado) - Università di Bologna, Department of Computer Science and Engineering, Bologna, 2021
Type: Tese
Genre: Textual
URI: http://web.bndes.gov.br/bib/jspui/handle/1408/23905
Date Available: 2023-12-08T15:20:37Z
Appears in Collections:BNDES em Foco - Teses e Dissertações

Please use this identifier to cite or link to this item: http://web.bndes.gov.br/bib/jspui/handle/1408/23905
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