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Main Authors: QiFei Wang, YiHan Zhao, JunLong Wang, Shuai Liu, HaoLin Liu, Yang Qu, YingFeng Sun, ChengWu Li
Format: Artículo Open Access
Published: Wiley 2025
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Online Access:https://onlinelibrary.wiley.com/doi/10.1111/risa.17708
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author QiFei Wang
YiHan Zhao
JunLong Wang
Shuai Liu
HaoLin Liu
Yang Qu
YingFeng Sun
ChengWu Li
author_facet QiFei Wang
YiHan Zhao
JunLong Wang
Shuai Liu
HaoLin Liu
Yang Qu
YingFeng Sun
ChengWu Li
QiFei Wang
YiHan Zhao
JunLong Wang
Shuai Liu
HaoLin Liu
Yang Qu
YingFeng Sun
ChengWu Li
collection Wiley Open Access
contents Applications of interpretable ensemble learning for workplace risk assessment: The Chinese coal industry as an example QiFei Wang YiHan Zhao JunLong Wang Shuai Liu HaoLin Liu Yang Qu YingFeng Sun ChengWu Li Risk Analysis AbstractMachine learning has demonstrated potential in addressing complex nonlinear changes in risk assessment. However, further exploration is needed to enhance model interpretability and optimize performance. Therefore, this study aims to develop a novel workplace risk assessment framework. By utilizing the SHapley Additive exPlanations (SHAP) analysis method and ensemble learning algorithms, the framework maps characteristic attributes to risk levels. Reliability validation of the framework and analysis of critical attribute components are conducted using accidents in Chinese coal enterprises as a case study, which represents one of the most serious occupational hazards. The results indicate that addressing interpretability issues of ensemble learning algorithms yields a model capable of accurately assessing workplace risk and understanding model decision‐making processes. Comparative experiments show that the model achieves an accuracy of up to 98.3%, confirming its robust performance. The outcomes of the SHAP model for feature importance facilitate the identification of critical attributes that explain causal relationships leading to risk‐level findings. This provides valuable accident prevention strategies to minimize occupational injuries and losses. 10.1111/risa.17708 http://onlinelibrary.wiley.com/termsAndConditions#vor
doi_str_mv 10.1111/risa.17708
format Artículo Open Access
id wiley_oa_10_1111_risa_17708
institution Wiley Open Access
license_str_mv http://onlinelibrary.wiley.com/termsAndConditions#vor
publishDate 2025
publisher Wiley
record_format wiley_oa
spellingShingle Applications of interpretable ensemble learning for workplace risk assessment: The Chinese coal industry as an example
QiFei Wang
YiHan Zhao
JunLong Wang
Shuai Liu
HaoLin Liu
Yang Qu
YingFeng Sun
ChengWu Li
Risk Analysis
Applications of interpretable ensemble learning for workplace risk assessment: The Chinese coal industry as an example QiFei Wang YiHan Zhao JunLong Wang Shuai Liu HaoLin Liu Yang Qu YingFeng Sun ChengWu Li Risk Analysis AbstractMachine learning has demonstrated potential in addressing complex nonlinear changes in risk assessment. However, further exploration is needed to enhance model interpretability and optimize performance. Therefore, this study aims to develop a novel workplace risk assessment framework. By utilizing the SHapley Additive exPlanations (SHAP) analysis method and ensemble learning algorithms, the framework maps characteristic attributes to risk levels. Reliability validation of the framework and analysis of critical attribute components are conducted using accidents in Chinese coal enterprises as a case study, which represents one of the most serious occupational hazards. The results indicate that addressing interpretability issues of ensemble learning algorithms yields a model capable of accurately assessing workplace risk and understanding model decision‐making processes. Comparative experiments show that the model achieves an accuracy of up to 98.3%, confirming its robust performance. The outcomes of the SHAP model for feature importance facilitate the identification of critical attributes that explain causal relationships leading to risk‐level findings. This provides valuable accident prevention strategies to minimize occupational injuries and losses. 10.1111/risa.17708 http://onlinelibrary.wiley.com/termsAndConditions#vor
title Applications of interpretable ensemble learning for workplace risk assessment: The Chinese coal industry as an example
topic Risk Analysis
url https://onlinelibrary.wiley.com/doi/10.1111/risa.17708