Quantifying Societal Stress: Forecasting Historical London Mortality using Hardship Sentiment and Crime Data with Natural Language Processing and Time-Series

Open Access
Authors
Publication date 2025
Host editors
  • Isuri Nanomi Arachchige
  • Francesca Frontini
  • Ruslan Mitkov
  • Paul Rayson
Book title Proceedings of the First Workshop on Natural Language Processing and Language Models for Digital Humanities
Book subtitle associated with The 15th International Conference on Recent Advances in Natural Language Processing RANLP'2025 : LM4DH 2025 : 11 September, 2025, Varna, Bulgaria
ISBN (electronic)
  • 9789544521066
Event 1st Workshop on Natural Language Processing and Language Models for Digital Humanities
Pages (from-to) 112-119
Publisher Shoumen: INCOMA Ltd.
Organisations
  • Interfacultary Research - Institute for Logic, Language and Computation (ILLC)
Abstract
We study links between societal stress - quantified from 18th–19th century Old Bailey trial records - and weekly mortality in historical London. Using MacBERTh-based hardship sentiment and time-series analyses (CCF, VAR/IRF, and a Temporal Fusion Transformer, TFT), we find robust lead–lag associations. Hardship sentiment shows its strongest predictive contribution at a 5–6 week lead for mortality in the TFT, while mortality increases precede higher conviction rates in the courts. Results align with Epidemic Psychology and suggest that text-derived stress markers can improve forecasting of public-health relevant mortality fluctuations.
Document type Conference contribution
Language English
Published at https://doi.org/10.26615/978-954-452-106-6-010
Published at https://acl-bg.org/proceedings/2025/LM4DH%202025/pdf/2025.lm4dh-1.10.pdf
Other links https://github.com/Seb-Olsen/ranlp25-hardship-mortality https://acl-bg.org/proceedings/2025/LM4DH%202025/index.html
Downloads
2025.lm4dh-1.10 (Final published version)
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