The authors investigate meta-learning / transfer learning for accident severity prediction, asking whether knowledge learned from a large, generic accident database can be transferred to a smaller, technology‑specific (and lower-quality) dataset. For PSM incident investigation, this matters because many organizations have limited high-quality local incident data but still need models that generalize. The study suggests a pathway to reuse lessons learned across plants and technologies, reducing the amount of new labeled data needed for useful predictive analytics.
N. Tamascelli, N. Paltrinieri, and V. Cozzani, "Learning From Major Accidents: A Meta-Learning Perspective," Safety Science, vol. 158, art. no. 105984, Feb. 2023, doi: 10.1016/j.ssci.2022.105984.