What is it about?
Near-Miss incidents can be treated as events to signal the weakness of the safety management system (SMS) at the workplace. Analyzing near-misses will provide relevant root causes behind such incidents so that effective safety-related interventions can be developed beforehand. Despite having a huge potential towards workplace safety improvements, analysis of near-misses is scant in the literature owing to the fact that near-misses are often reported as text narratives. The aim of this study is, therefore, to explore text-mining for extraction of root causes of near-misses from the narrative text descriptions of such incidents and to measure their relationships probabilistically. Root causes were extracted by word cloud technique and the causal model was constructed using a Bayesian network (BN). Finally, using BN’s inference mechanism, scenarios were evaluated and root causes were listed in a prioritized order. A case study in a steel plant validated the approach and raised concerns for a variety of circumstances such as incidents related to collision, slip-trip-fall, and working at height.
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This page is a summary of: Prioritization of Near-Miss Incidents Using Text Mining and Bayesian Network, January 2017, Springer Science + Business Media,
DOI: 10.1007/978-981-10-5427-3_20.
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