End-to-end supply chain resilience management using deep learning, survival analysis, and explainable artificial intelligence
Xingyu Li(Jilin University), Dmitry Ivanov(Berlin School of Economics and Law), Vasiliy Krivtsov(Ford Motor Company (United States)), Robert X. Gao(Case Western Reserve University), Chaoye Pan(Ford Motor Company (United States)), Aydin Nassehi(University of Bristol)
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