Evolution of ESG-focused DLT Research: An NLP Analysis of the Literature

  • Walter Hernandez Cruz
  • , Kamil Tylinski
  • , Alastair Moore
  • , Niall Roche
  • , Nikhil Vadgama
  • , Horst Treiblmaier
  • , Jiangbo Shangguan
  • , Paolo Tasca
  • , Jiahua Xu

Research output: Contribution to journalArticleResearchpeer-review

Abstract

Distributed Ledger Technology (DLT) faces increasing environmental scrutiny, particularly concerning the energy consumption of the Proof of Work (PoW) consensus mechanism and broader Environmental, Social, and Governance (ESG) issues. However, existing systematic literature reviews of DLT rely on limited analyses of citations, abstracts, and keywords, failing to fully capture the field’s complexity and ESG concerns. We address these challenges by analyzing the full text of 24,539 publications using Natural Language Processing (NLP) with our manually labeled Named Entity Recognition (NER) data set of 39,427 entities for DLT.
This methodology identified 505 key publications at the DLT/ESG intersection, enabling comprehensive domain analysis. Our combined NLP and temporal graph analysis reveals critical trends in DLT evolution and ESG impacts, including cryptography and peer-to-peer networks research’s foundational influence, Bitcoin’s persistent impact on research and environmental concerns (a “Lindy effect”), Ethereum’s catalytic role on Proof of Stake (PoS) and smart contract adoption, and the industry’s progressive shift toward energy-efficient consensus mechanisms. Our contributions include the first DLT-specific NER data set addressing the scarcity of high-quality labeled NLP data in blockchain research, a methodology integrating NLP and temporal graph analysis for large-scale interdisciplinary literature reviews, and the first NLP-driven literature review focusing on DLT’s ESG aspects.
Original languageEnglish
Pages (from-to)810-833
JournalQuantitative Science Studies
Volume6
DOIs
Publication statusPublished - Aug 2025

Keywords

  • distributed ledger technology
  • esg
  • named entity recognition
  • natural language processing
  • systematic literature review
  • temporal graph analysis

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