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An exploration of text mining of narrative reports of injury incidents to assess risk

机译:探索伤害事件叙事报告的文本挖掘以评估风险

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摘要

A topic model was explored using unsupervised machine learning to summarized free-text narrative reports of 77,215 injuries that occurred in coal mines in the USA between 2000 and 2015. Latent Dirichlet Allocation modeling processes identified six topics from the free-text data. One topic, a theme describing primarily injury incidents resulting in strains and sprains of musculoskeletal systems, revealed differences in topic emphasis by the location of the mine property at which injuries occurred, the degree of injury, and the year of injury occurrence. Text narratives clustered around this topic refer most frequently to surface or other locations rather than underground locations that resulted in disability and that, also, increased secularly over time. The modeling success enjoyed in this exploratory effort suggests that additional topic mining of these injury text narratives is justified, especially using a broad set of covariates to explain variations in topic emphasis and for comparison of surface mining injuries with injuries occurring during site preparation for construction.
机译:使用无监督机器学习对主题模型进行了研究,总结了2000年至2015年间在美国煤矿发生的77,215人受伤的自由文本叙述报告。潜在的狄里克雷分配模型过程从自由文本数据中确定了六个主题。一个主题是一个主题,主要描述导致肌肉骨骼系统应变和扭伤的伤害事件,该主题揭示了主题重点的不同之处,即发生伤害的矿产位置,伤害程度和伤害发生年份。围绕该主题的文字叙述最常指的是地面或其他地方,而不是地下的地方,这会导致残疾,并且随着时间的推移世俗地增加。在这项探索性工作中获得的建模成功表明,对这些伤害文本叙述进行额外的主题挖掘是有道理的,尤其是使用大量协变量来解释主题重点的变化,以及将地面采矿伤害与施工现场准备中发生的伤害进行比较。

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