Detection of typical progress patterns of industrial incidents by text mining technique

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Abstract

To prevent accidents, it is very important to learn why and how past accidents occurred and escalated. The information of accidents is mostly recorded in natural language texts, which is not convenient to analyze the flow of events in the accidents. This paper proposes a method to recognize typical flow of events in a large set of text reports. By focusing two adjacent sentences, our system succeeded to detect typical pairs of predecessor word and successor word. Then we can recognize the typical flows of accidents.

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Nakata, T., & Sohrab, M. (2018). Detection of typical progress patterns of industrial incidents by text mining technique. In Advances in Intelligent Systems and Computing (Vol. 589, pp. 221–229). Springer Verlag. https://doi.org/10.1007/978-3-319-60645-3_22

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