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Part of the Physical Sciences and Mathematics Commons

Works by Lan Zhang in Physical Sciences and Mathematics

2023

Cascade Vertical Federated Learning Towards Straggler Mitigation and Label Privacy over Distributed Labels, Wensheng Xia, Ying Li, Lan Zhang, Zhonghai Wu, Xiaoyong Yuan
Michigan Tech Publications

Link

2022

Pay "Attention" to Adverse Weather: Weather-aware Attention-based Object Detection, Saket S. Chaturvedi, Lan Zhang, Xiaoyong Yuan
Michigan Tech Publications

Link

FedZKT: Zero-Shot Knowledge Transfer towards Resource-Constrained Federated Learning with Heterogeneous On-Device Models, Lan Zhang, Dapeng Wu, Xiaoyong Yuan
Michigan Tech Publications

Link

Cascade Vertical Federated Learning, Wensheng Xia, Ying Li, Lan Zhang, Zhonghai Wu, Xiaoyong Yuan
Michigan Tech Publications

Link

ES Attack: Model Stealing Against Deep Neural Networks Without Data Hurdles, Xiaoyong Yuan, Leah Ding, Lan Zhang, Xiaolin Li, Dapeng Oliver Wu
Michigan Tech Publications

Link

2021

Beyond Class-Level Privacy Leakage: Breaking Record-Level Privacy in Federated Learning, Xiaoyong Yuan, Xiyao Ma, Lan Zhang, Yuguang Fang, Dapeng Wu
Michigan Tech Publications

Link

Sensing to Learn: Deep Learning Based Wireless Sensing via Connected Digital and Physical Experiments, Lan Zhang, Xianhao Chen, Yawei Pang, Xiaoyong Yuan
Michigan Tech Publications

Link

 
 

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