Chong Yu
Asst Professor
Rhodes Hall
887
CEAS - Computer Science - 0030
Professional Summary
Dr. Yu's research interests include wireless and mobile networks, data analytics and processing, and the Internet of Things.
I am seeking self-motivated Ph.D. students who have interests in the following areas, including but not limited to artificial intelligence (AI), federated learning, and cybersecurity. If you are interested, please email me a copy of your resume, GPA, GRE score (if applicable), and TOEFL/IELTS score (for international applicants). In your email, please use “Graduate Applicant – Your Name” as the subject, and describe the motivation of your interests. Multiple RAs will be provided to outstanding applicants, starting from Spring 2025 or Fall 2025.
Education
Bachelor of Science in Communication Engineering: Northeastern University, Shenyang, China, 2015
Master of Science in Communication and Information System: Northeastern University, Shenyang, China, 2017
Ph.D. in Electrical and Computer Engineering: University of Nebraska-Lincoln, Lincoln, USA, 2023
Publications
Peer Reviewed Publications
C. Yu, S. Shen, H. Yang, K. Zhang and H. Zhao (2022. ) Leveraging Energy, Latency and Robustness for Routing Path Selection in Internet of Battlefield Things . IEEE Internet of Things Journal, , 9 (14 ) ,12601 -12613
C. Yu, S. Shen, K. Zhang, H. Zhao, and Y. Shi (2022. ) Energy-Aware Device Scheduling for Joint Federated Learning in Edge-assisted Internet of Agriculture Things . in Proc. of IEEE WCNC'22, , 1140 -1145
C. Yu, S. Shen, S. Wang, K. Zhang, and H. Zhao (2022. ) Efficient Multi-Layer Stochastic Gradient Descent Algorithm for Federated Learning in E-health . in Proc. of IEEE ICC'22, , 1263 -1268
S. Shen, C. Yu, K. Zhang, and S. Ci (2022. ) Collaborative Edge Caching with Personalized Modeling of Content Popularity over Indoor Mobile Social Networks . in Proc. of IEEE ICC'22, , 4114 -4119
S. Shen, C. Yu, K. Zhang, J. Ni, and S. Ci (2021. ) Adaptive Artificial Intelligence for Resource-Constrained Connected Vehicles in Cybertwin-Driven 6G Network . IEEE Internet of Things Journal, , 8 (22 ) ,16269 -16278
S. Shen, C. Yu, K. Zhang, J. Ni, and S. Ci (2021. ) Adaptive and Dynamic Security in AI-Empowered 6G: From an Energy Efficiency Perspective . IEEE Communications Standards Magazine, , 5 (3 ) ,80 -88
S. Shen, C. Yu, K. Zhang, X. Chen, H. Chen, and S. Ci (2021. ) Communication-Efficient Federated Learning for Connected Vehicles with Constrained Resources . in Proc. of IEEE IWCMC'21, , 1636 -1641
W. Yao, K. Zhang, C. Yu, and H. Zhao (2021. ) Exploiting Ensemble Learning for Edge-assisted Anomaly Detection Scheme in e-healthcare System . in Proc. of IEEE Globecom'21, , 1 -7
S. Shen, C. Yu, K. Zhang, and S. Ci (2021. ) Exploiting Feature Interactions for Malicious Website Detection with Overhead-accuracy Tradeoff . in Proc. of IEEE ICC'21, , 1 -7
C. Yu, S. Si, H. Guo, and H. Zhao (2018. ) Modeling and Performance of the IEEE 802.11p Broadcasting for Intra-Platoon Communication . Sensors, , 18 (9 ) ,2971 -2986
C. Yu, S. Shen, S. Wang, K. Zhang, and H. Zhao, (2024. ) Communication-Efficient Hybrid Federated Learning for E-health with Horizontal and Vertical Data Partitioning .IEEE Transactions on Neural Networks and Learning Systems, ,
Courses Taught
Data Structures Level:Undergraduate
Contact Information
Rhodes Hall 887
yuc5@ucmail.uc.edu