1. Evaluating machine learning performance in predicting injury severity in agribusiness industries
- Author
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Fatemeh Davoudi Kakhki, Gretchen A. Mosher, and Steven A. Freeman
- Subjects
Total cost ,Computer science ,business.industry ,05 social sciences ,0211 other engineering and technologies ,Public Health, Environmental and Occupational Health ,02 engineering and technology ,Viewpoints ,Machine learning ,computer.software_genre ,Outcome (game theory) ,Occupational safety and health ,Support vector machine ,Naive Bayes classifier ,Quantitative analysis (finance) ,021105 building & construction ,0501 psychology and cognitive sciences ,Artificial intelligence ,Safety, Risk, Reliability and Quality ,business ,Safety Research ,computer ,050107 human factors ,Agribusiness - Abstract
Although machine learning methods have been used as an outcome prediction tool in many fields, their utilization in predicting incident outcome in occupational safety is relatively new. This study tests the performance of machine learning techniques in modeling and predicting occupational incidents severity with respect to accessible information of injured workers in agribusiness industries using workers’ compensation claims. More than 33,000 incidents within agribusiness industries in the Midwest of the United States for 2008–2016 were analyzed. The total cost of incidents was extracted and classified from workers’ compensation claims. Supervised machine learning algorithms for classification (support vector machines with linear, quadratic, and RBF kernels, Boosted Trees, and Naive Bayes) were applied. The models can predict injury severity classification based on injured body part, body group, nature of injury, nature group, cause of injury, cause group, and age and tenure of injured workers with the accuracy rate of 92–98%. The results emphasize the significance of quantitative analysis of empirical injury data in safety science, and contribute to enhanced understanding of injury patterns using predictive modeling along with safety experts’ perspectives with regulatory or managerial viewpoints. The predictive models obtained from this study can be used to augment the experience of safety professionals in agribusiness industries to improve safety intervention efforts.
- Published
- 2019
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