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Application of machine learning to mapping primary causal factors in self reported safety narratives

机译:机器学习在自我报告安全叙述中绘制主要因果关系的应用

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摘要

A new method for analysis of text-based reports in accident coding is suggested. This approach utilizes latent semantic analysis to infer higher-order structures between documents and provide an unbiased metric to the narrative analysis process. Results from this study on a small sample of aviation safety narratives demonstrates an unsupervised categorization accuracy of 44% for primary-cause within the existing taxonomy. If provided with a large sample set, the indication is that a significant increase in accuracy is possible along with the possibility of recoding between data sets. Demonstrated is the ability of LSA to capture contextual proximity of a narrative. (C) 2015 The Authors. Published by Elsevier Ltd.
机译:提出了一种新的事故编码中基于文本的报告分析方法。这种方法利用潜在的语义分析来推断文档之间的高阶结构,并为叙事分析过程提供无偏度量。这项关于少量航空安全叙述样本的研究结果表明,在现有分类法中,主要原因的无监督分类准确性为44%。如果提供了较大的样本集,则表明准确性可能会大大提高,并且有可能在数据集之间进行重新编码。证明了LSA捕获叙述的上下文接近的能力。 (C)2015作者。由Elsevier Ltd.发布

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