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Text-document clustering-based cause and effect analysis methodology for steel plant incident data

机译:基于文本文档聚类的钢厂事故数据因果分析方法

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The purpose of this study is to develop a text clustering-based cause and effect analysis methodology for incident data to unfold the root causes behind the incidents. A cause-effect diagram is usually prepared by using experts' knowledge which may fail to capture all the causes present at a workplace. On the other hand, the description of incidents provided by the workers in the form of incident reports is typically a rich data source and can be utilized to explore the causes and sub-causes of incidents. In this study, data were collected from an integrated steel plant. The text data were analysed using singular value decomposition (SVD) and expectation-maximization (EM) algorithm. Results suggest that text-document clustering can be used as a feasible method for exploring the hidden factors and trends from the description of incidents occurred at workplaces. The study also helped in finding out the anomaly in incident reporting.
机译:这项研究的目的是为事件数据开发基于文本聚类的因果分析方法,以揭示事件背后的根本原因。因果图通常是使用专家的知识准备的,这些知识可能无法捕捉到工作场所中存在的所有原因。另一方面,工人以事故报告的形式提供的事故描述通常是一个丰富的数据源,可以用来探究事故的原因和子原因。在这项研究中,数据是从一家综合钢铁厂收集的。使用奇异值分解(SVD)和期望最大化(EM)算法分析文本数据。结果表明,文本文档聚类可以用作一种可行的方法,通过描述工作场所中发生的事件来探索隐藏的因素和趋势。该研究还有助于找出事件报告中的异常情况。

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