Every year there are 1.9 million deaths worldwide attributed to occupational health and safety risk factors. To address poor working conditions and fulfill UN's SDG 8, “protect labour rights and promote safe working environments for all workers”, governmental agencies conduct labour inspections, using checklists to survey individual organisations for working environment violations. Recent research highlights the benefits of using machine learning for creating checklists. However, the current methods only create static checklists and do not adapt them to new information that surfaces during use. In contrast, we propose a new method called Context-aware Bayesian Case-Based Reasoning (CBCBR) that creates dynamic checklists. These checklists are continuously adapted as the inspections progress, based on how they are answered. Our evaluations show that CBCBR's dynamic checklists outperform static checklists created via the current state-of-the-art methods, increasing the expected number of working environment violations found in the labour inspections.
CITATION STYLE
Flogard, E. L., Mengshoel, O. J., & Bach, K. (2022). Creating Dynamic Checklists via Bayesian Case-Based Reasoning: Towards Decent Working Conditions for All. In IJCAI International Joint Conference on Artificial Intelligence (pp. 5108–5114). International Joint Conferences on Artificial Intelligence. https://doi.org/10.24963/ijcai.2022/709
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