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Using structural topic modeling to identify latent topics and trends in aviation incident reports

机译:使用结构主题建模来识别航空事故报告中的潜在主题和趋势

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The Aviation Safety Reporting System includes over a million confidential reports describing aviation safety incidents. Natural language processing techniques allow for relatively rapid and largely automated analysis of large collections of text data. Interpretation of the results and further investigations by subject matter experts can produce meaningful results. This explains the many commercial and academic applications of natural language processing to aviation safety reports. Relatively few published articles have, however, employed topic modeling, an approach that can identify latent structure within a corpus of documents. Topic modeling is more flexible and relies less on subject matter experts than alternative document categorization and clustering methods. It can, for example, uncover any number of topics hidden in a set of incident reports that have been, or would be, assigned to the same category when using labels and methods applied in earlier research. This article describes the application of structural topic modeling to Aviation Safety Reporting System data. The application identifies known issues. The method also reveals previously unreported connections. Sample results reported here highlight fuel pump, tank, and landing gear issues and the relative insignificance of smoke and fire issues for private aircraft. The results also reveal the prominence of the Quiet Bridge Visual and Tip Toe Visual approach paths at San Francisco International Airport in safety incident reports. These results would, ideally, be verified by subject matter experts before being used to set priorities when planning future safety studies.
机译:航空安全报告系统包括超过一百万份描述航空安全事件的机密报告。自然语言处理技术允许对大量文本数据进行相对快速和很大程度上自动化的分析。结果的解释和主题专家的进一步调查可以产生有意义的结果。这解释了自然语言处理在航空安全报告中的许多商业和学术应用。但是,相对而言,很少有文章采用主题建模,这是一种可以识别文档语料库中潜在结构的方法。与其他文档分类和聚类方法相比,主题建模更灵活,并且对主题专家的依赖更少。例如,当使用早期研究中使用的标签和方法时,它可以发现隐藏在一组事件报告中的任何数量的主题,这些主题已被或将被分配给同一类别。本文介绍结构主题建模在航空安全报告系统数据中的应用。该应用程序识别已知问题。该方法还揭示了以前未报告的连接。此处报告的示例结果突出显示了燃油泵,油箱和起落架问题以及私人飞机烟火问题的相对重要性。结果还显示,在安全事件报告中,旧金山国际机场的“静桥视觉”和“脚趾视觉”进场路径十分突出。理想情况下,这些结果将由主题专家进行验证,然后再用于计划未来的安全研究时确定优先级。

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