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Journal Article

Citation

Nenonen N. Appl. Ergon. 2013; 44(2): 215-224.

Affiliation

Department of Industrial Management, Center for Safety Management and Engineering, Tampere University of Technology, P.O. Box 541, FI-33101 Tampere, Finland.

Copyright

(Copyright © 2013, Elsevier Publishing)

DOI

10.1016/j.apergo.2012.07.001

PMID

22877702

Abstract

The utilisation of data mining methods has become common in many fields. In occupational accident analysis, however, these methods are still rarely exploited. This study applies methods of data mining (decision tree and association rules) to the Finnish national occupational accidents and diseases statistics database to analyse factors related to slipping, stumbling, and falling (SSF) accidents at work from 2006 to 2007. SSF accidents at work constitute a large proportion (22%) of all accidents at work in Finland. In addition, they are more likely to result in longer periods of incapacity for work than other workplace accidents. The most important factor influencing whether or not an accident at work is related to SSF is the specific physical activity of movement. In addition, the risk of SSF accidents at work seems to depend on the occupation and the age of the worker. The results were in line with previous research. Hence the application of data mining methods was considered successful. The results did not reveal anything unexpected though. Nevertheless, because of the capability to illustrate a large dataset and relationships between variables easily, data mining methods were seen as a useful supplementary method in analysing occupational accident data.


Language: en

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