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From free-text to structured safety management: Introduction of a semi-automated classification method of railway hazard reports to elements on a bow-tie diagram

机译:从自由文本到结构性安全管理:引入半自动分类方法的铁路危险报告到船首领带图上的元素

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摘要

This paper introduces a semi-automated technique for classifying text-based close call reports from the GB railway industry. The classification schema uses natural language processing techniques to classify close call reports in accordance with the threat pathways shown on bow-tie diagrams. The method enables categorisation of a very large number of unstructured text documents where safety-related information has not previously been extracted due to the infeasibility of analysis by human readers. The results demonstrate mixed accuracy in the categorisation of close calls, with the highest accuracy being for the threat pathways that are more frequently reported. This work paves the way to machine-assisted analysis of text-based safety and risk databases, and provides a step forward in the introduction of data analytics in the safety and risk domain. Others working in this area have speculated that approaches such as this could be mandatory for safety management in the future.
机译:本文介绍了一种半自动技术,用于分类基于GB铁路行业的基于文本的关闭呼叫报告。 分类架构使用自然语言处理技术根据弓领导图上所示的威胁路径来对Close呼叫报告进行分类。 该方法能够对最多大量的非结构化文本文档进行分类,其中由于人类读者分析的不可行性,尚未提取安全相关信息。 结果表明了密切呼叫分类中的混合精度,具有更频繁报道的威胁途径的最高精度。 这项工作铺平了对基于文本的安全和风险数据库的机器辅助分析,并在安全和风险领域引入数据分析的前进方面。 在这一领域工作的其他人推测了这种方法,可能是未来安全管理的强制性。

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