IEEE INFOCOM 2023
Federated Learning 1
Adaptive Configuration for Heterogeneous Participants in Decentralized Federated Learning
Yunming Liao (University of Science and Technology of China, China); Yang Xu (University of Science and Technology of China & School of Computer Science and Technology, China); Hongli Xu and Lun Wang (University of Science and Technology of China, China); Chen Qian (University of California at Santa Cruz, USA)
Speaker Yunming Liao
Yunming Liao received a B.S. degree in 2020 from the University of Science and Technology of China. He is currently pursuing his Ph.D. degree in the School of Computer Science and Technology, University of Science and Technology of China. His research interests include mobile edge computing and federated learning.
Asynchronous Federated Unlearning
Ningxin Su and Baochun Li (University of Toronto, Canada)
In this paper, we present the design and implementation of Knot, a new clustered aggregation mechanism custom-tailored to asynchronous federated learning. The design of Knot is based upon our intuition that client aggregation can be performed within each cluster only so that retraining due to data erasure can be limited to within each cluster as well. To optimize client-cluster assignment, we formulated a lexicographical minimization problem that could be transformed into a linear programming problem and solved efficiently. Over a variety of datasets and tasks, we have shown clear evidence that Knot outperformed the state-of-the-art federated unlearning mechanisms by up to 85% in the context of asynchronous federated learning.
Speaker Jointly Presented by Ningxin Su and Baochun Li (University of Toronto)
Ningxin Su is a third-year Ph.D. student in the Department of Electrical and Computer Engineering, University of Toronto, under the supervision of Prof. Baochun Li. She received her M.E. and B.E. degrees from the University of Sheffield and Beijing University of Posts and Telecommunications in 2020 and 2019, respectively. Her research area includes distributed machine learning, federated learning and networking. Her website is located at ningxinsu.github.io.
Baochun Li is currently a Professor at the Department of Electrical and Computer Engineering, University of Toronto. He is a Fellow of IEEE.
Communication-Efficient Federated Learning for Heterogeneous Edge Devices Based on Adaptive Gradient Quantization
Heting Liu, Fang He and Guohong Cao (The Pennsylvania State University, USA)
Speaker Heting Liu (The Pennsylvania State University)
Heting Liu is a PhD candidate at The Pennsylvania State University since 2017. Her research interests include edge computing, federated learning, cloud computing and applied machine learning.
Toward Sustainable AI: Federated Learning Demand Response in Cloud-Edge Systems via Auctions
Fei Wang (Beijing University of Posts and Telecommunications, China); Lei Jiao (University of Oregon, USA); Konglin Zhu (Beijing University of Posts and Telecommunications, China); Xiaojun Lin (Purdue University, USA); Lei Li (Beijing University of Posts And Telecommunications, China)
Speaker Fei Wang (Beijing University of Posts and Telecommunications)
Fei Wang received the masters degree in In- formation and Communication Engineering from Harbin Engineering University, China, in 2021. He is currently working towards the Ph.D. degree in School of Artificial Intelligence in Beijing University of Posts and Telecommunications. His research interests are in the areas of online learning and federated learning.
Session Chair
Giovanni NEGLIA
Federated Learning 2
Heterogeneity-Aware Federated Learning with Adaptive Client Selection and Gradient Compression
Zhida Jiang (University of Science and Technology of China, China); Yang Xu (University of Science and Technology of China & School of Computer Science and Technology, China); Hongli Xu and Zhiyuan Wang (University of Science and Technology of China, China); Chen Qian (University of California at Santa Cruz, USA)
Speaker Zhida Jiang
Zhida Jiang received the B.S.degree in 2019 from the Hefei University of Technology. He is currently a Ph.D. candidate in the School of Computer Science and Technology, University of Science and Technology of China (USTC). His research interests include mobile edge computing and federated learning
Federated Learning under Heterogeneous and Correlated Client Availability
Angelo Rodio (Inria, France); Francescomaria Faticanti (INRIA, France); Othmane Marfoq (Inria, France & Accenture Technology Labs, France); Giovanni Neglia (Inria, France); Emilio Leonardi (Politecnico di Torino, Italy)
Our experimental results show that CA-Fed has higher time-average accuracy and a lower standard deviation than state-of-the-art AdaFed and F3AST.
Speaker Angelo Rodio (Inria, France)
Angelo Rodio is a third-year Ph.D. student at Inria, France, under the supervision of Prof. Giovanni Neglia and Prof. Alain Jean-Marie. He received his B.E. and M.E. degrees from Politecnico di Bari, Italy, in 2018 and 2020, respectively. As part of a double diploma program, he also obtained his M.E. degree from Université Côte d'Azur, France, in 2020. His research area includes distributed machine learning, federated learning, and networking. His website can be found at https://www-sop.inria.fr/members/Angelo.Rodio.
Federated Learning with Flexible Control
Shiqiang Wang (IBM T. J. Watson Research Center, USA); Jake Perazzone (US Army Research Lab, USA); Mingyue Ji (University of Utah, USA); Kevin S Chan (US Army Research Laboratory, USA)
Speaker Shiqiang Wang (IBM T. J. Watson Research Center, USA)
Shiqiang Wang is a Staff Research Scientist at IBM T. J. Watson Research Center, NY, USA. He received his Ph.D. from Imperial College London, United Kingdom, in 2015. His current research focuses on the intersection of distributed computing, machine learning, networking, and optimization. He has made foundational contributions to edge computing and federated learning that generated both academic and industrial impact. He received the IEEE Communications Society (ComSoc) Leonard G. Abraham Prize in 2021, IEEE ComSoc Best Young Professional Award in Industry in 2021, IBM Outstanding Technical Achievement Awards (OTAA) in 2019, 2021, and 2022, and multiple Invention Achievement Awards from IBM since 2016.
FedMoS: Taming Client Drift in Federated Learning with Double Momentum and Adaptive Selection
Xiong Wang and Yuxin Chen (Huazhong University of Science and Technology, China); Yuqing Li (Wuhan University, China); Xiaofei Liao and Hai Jin (Huazhong University of Science and Technology, China); Bo Li (Hong Kong University of Science and Technology, Hong Kong)
Speaker Xiong Wamg
Session Chair
Rui Zhang
Federated Learning 3
A Hierarchical Knowledge Transfer Framework for Heterogeneous Federated Learning
Yongheng Deng and Ju Ren (Tsinghua University, China); Cheng Tang and Feng Lyu (Central South University, China); Yang Liu and Yaoxue Zhang (Tsinghua University, China)
Speaker Yongheng Deng (Tsinghua University)
Yongheng Deng received the B.S. degree from Nankai University, Tianjin, China, in 2019, and is currently pursuing the Ph.D. degree at the department of computer science and technology, Tsinghua University, Beijing, China. Her research interests include federated learning, edge intelligence, distributed system and mobile/edge computing.
Tackling System Induced Bias in Federated Learning: Stratification and Convergence Analysis
Ming Tang (Southern University of Science and Technology, China); Vincent W.S. Wong (University of British Columbia, Canada)
Speaker Ming Tang (Southern University of Science and Technology )
Ming Tang is an Assistant Professor in the Department of Computer Science and Engineering at Southern University of Science and Technology, Shenzhen, China. She received her Ph.D. degree from the Department of Information Engineering, The Chinese University of Hong Kong, Hong Kong, China, in Sep. 2018. She worked as a postdoctoral research fellow at The University of British Columbia, Vancouver, Canada, from Nov. 2018 to Jan. 2022. Her research interests include mobile edge computing, federated learning, and network economics.
FedSDG-FS: Efficient and Secure Feature Selection for Vertical Federated Learning
Anran Li (Nanyang Technological University, Singapore); Hongyi Peng (Nanyang Technological University, Singapore & Alibaba Group, China); Lan Zhang and Jiahui Huang (University of Science and Technology of China, China); Qing Guo, Han Yu and Yang Liu (Nanyang Technological University, Singapore)
Speaker Anran Li (Nanyang Technological University)
Anran Li is currently the Research Fellow at Nanyang Technological University under the supervision of Prof. Yang Liu. She received her Ph.D degree from the School of Computer Science and Technology, University of Science and Technology of China, under the supervision of Prof. Xiangyang Li and Prof. Lan Zhang.
Joint Participation Incentive and Network Pricing Design for Federated Learning
Ningning Ding (Northwestern University, USA); Lin Gao (Harbin Institute of Technology (Shenzhen), China); Jianwei Huang (The Chinese University of Hong Kong, Shenzhen, China)
Speaker Ningning Ding (Northwestern University)
Ningning Ding received the B.S. degree in information engineering from Southeast University, Nanjing, China, in 2018, and the Ph.D. degree in information engineering from The Chinese University of Hong Kong in 2022. She is currently a Post-Doctoral Fellow with the Department of Electrical and Computer Engineering, Northwestern University, USA. Her primary research interests are in the interdisciplinary area between network economics and machine learning, with current emphasis on pricing and incentive mechanism design for federated learning, distributed coded machine learning, and IoT systems.
Session Chair
Jiangchuan Liu
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