首页> 外文期刊>Journal of Civil Engineering and Management >AN ASSOCIATION RULE MINING MODEL FOR THE ASSESSMENT OF THE CORRELATIONS BETWEEN THE ATTRIBUTES OF SEVERE ACCIDENTS
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AN ASSOCIATION RULE MINING MODEL FOR THE ASSESSMENT OF THE CORRELATIONS BETWEEN THE ATTRIBUTES OF SEVERE ACCIDENTS

机译:协会规则挖掘模型,用于评估严重事故属性之间的相关性

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Identifying the correlations between the attributes of severe accidents could be vital to preventing them. If such relationships were known dynamically, it would be possible to take preventative actions against accidents. The paper aims to develop an analytical model that is adaptable for each type of data to create preventative measures that will be suitable for any computational systems. The present model collectively shows the relationships between the attributes in a coherent manner to avoid severe accidents. In this respect, Association Rule Mining (ARM) is used as the technique to identify the correlations between the attributes. The research adopts a positivist approach to adhere to the factual knowledge concerning nine different accident types through case studies and quantitative measurements in an objective nature. ARM was exemplified with nine different types of construction accidents to validate the adaptability of the proposed model. The results show that each accident type has different characteristics with varying combinations of the attribute, and analytical model accomplished to accommodate variation through the dataset. Ultimately, professionals can identify the cause-effect relationships effectively and set up preventative measures to break the link between the accident causing factors.
机译:识别严重事故属性之间的相关性可能对防止它们至关重要。如果这种关系动态地知道,则可以采取防止事故的预防措施。本文旨在开发一个分析模型,适用于每种类型的数据,以创造适合任何计算系统的预防措施。本模型以连贯的方式集体显示了属性之间的关系,以避免严重事故。在这方面,关联规则挖掘(ARM)用作识别属性之间的相关性的技术。该研究采用了一种积极的方法,通过案例研究和客观性质中的定量测量来遵守九种不同事故类型的事实知识。 ARM被九种不同类型的建筑事故举例说明,以验证所提出的模型的适应性。结果表明,每个事故类型具有不同的特征,具有不同的属性组合,而且完成了分析模型以适应通过数据集的变化。最终,专业人士可以有效地确定原因关系,并建立预防措施,以破坏事故导致因素之间的联系。

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