SHAP-driven insights into multimodal data: behavior phase prediction for industrial safety applications
Xiangchun Li(Beijing Institute of Technology), Chenbo Zhao(Renmin University of China), Yuzhen Long(China University of Mining and Technology), Xiaowei Li(China University of Mining and Technology), Jianhua Zeng(Shangrao Normal University), Shuhao Zhang(Soochow University), Baisheng Nie(China University of Mining and Technology)
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