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Self-Organizing Map and clustering algorithms for the analysis of occupational accident databases

机译:自组织图和聚类算法用于分析职业事故数据库

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摘要

Data mining techniques are a powerful method for extracting information from large databases. Among these techniques, clustering and projection of data from high-dimensional spaces hold a main role, since they allow to discover hidden structures in the data set. Following this approach, this paper presents a data analysis method designed to help the management and investigation of occupational accident databases. The purpose is to discover the most common sequences of events leading to accidents for devising preventive actions. To this aim, we developed a two-level approach based on the joint use of the Kohonen's Self-Organizing Map and the k-means clustering algorithm. This approach allows not only to group the accidents in different classes but also to visualize them in a way understandable for the analyst. The method has been applied with satisfactory results to a large database of occupational accidents occurred in the Italian wood processing industry. A comparison with the Hierarchical Clustering method confirmed the effectiveness of the proposed approach.
机译:数据挖掘技术是从大型数据库中提取信息的强大方法。在这些技术中,来自高维空间的数据聚类和投影起着主要作用,因为它们允许发现数据集中的隐藏结构。遵循这种方法,本文提出了一种旨在帮助职业事故数据库的管理和调查的数据分析方法。目的是发现导致事故的最常见事件序列,以制定预防措施。为此,我们基于Kohonen的自组织图和k-means聚类算法的联合使用,开发了一种两级方法。这种方法不仅可以将事故分类为不同的类别,还可以以分析人员可以理解的方式将其可视化。该方法已成功应用于意大利木材加工业中发生的大量职业事故数据库。与层次聚类方法的比较证实了该方法的有效性。

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