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사망사고와 부상사고의 산업재해분류를 위한 기계학습 접근법Machine Learning Approach to Classifying Fatal and Non-Fatal Accidents in Industries

Other Titles
Machine Learning Approach to Classifying Fatal and Non-Fatal Accidents in Industries
Authors
강성식장성록서용윤
Issue Date
Oct-2021
Publisher
한국안전학회
Keywords
machine learning; narrative texts; textmining; fatal accidents; non-fatal accidents; classification
Citation
한국안전학회지, v.36, no.5, pp 52 - 60
Pages
9
Indexed
KCI
Journal Title
한국안전학회지
Volume
36
Number
5
Start Page
52
End Page
60
URI
https://scholarworks.dongguk.edu/handle/sw.dongguk/4337
ISSN
1738-3803
2383-9953
Abstract
As the prevention of fatal accidents is considered an essential part of social responsibilities, both government and individual have devoted efforts to mitigate the unsafe conditions and behaviors that facilitate accidents. Several studies have analyzed the factors that cause fatal accidents and compared them to those of non-fatal accidents. However, studies on mathematical and systematic analysis techniques for identifying the features of fatal accidents are rare. Recently, various industrial fields have employed machine learning algorithms. This study aimed to apply machine learning algorithms for the classification of fatal and non-fatal accidents based on the features of each accident. These features were obtained by text mining literature on accidents. The classification was performed using four machine learning algorithms, which are widely used in industrial fields, including logistic regression, decision tree, neural network, and support vector machine algorithms. The results revealed that the machine learning algorithms exhibited a high accuracy for the classification of accidents into the two categories. In addition, the importance of comparing similar cases between fatal and non-fatal accidents was discussed. This study presented a method for classifying accidents using machine learning algorithms based on the reports on previous studies on accidents.
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