Journal of Henan University of Science and Technology(Natural Science), Volume. 46, Issue 4, 53(2025)
Adaptive Federated Bucketized Decision Tree Algorithm for Industrial Digital Twins
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SUN Shibao, ZHAO Yifan, ZHAO Pengcheng, LIU Jianfeng, LI Xin. Adaptive Federated Bucketized Decision Tree Algorithm for Industrial Digital Twins[J]. Journal of Henan University of Science and Technology(Natural Science), 2025, 46(4): 53
Received: May. 6, 2025
Accepted: Aug. 22, 2025
Published Online: Aug. 22, 2025
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