Years |
Title |
Affiliations |
Materials |
ICML 2022 |
Deep Neural Network Fusion via Graph Matching with Applications to Model Ensemble and Federated Learning |
Shanghai Jiao Tong University |
code |
Bitwidth Heterogeneous Federated Learning with Progressive Weight Dequantization |
KAIST |
|
FedNew: A Communication-Efficient and Privacy-Preserving Newton-Type Method for Federated Learning |
University of Oulu |
code |
FedNL: Making Newton-Type Methods Applicable to Federated Learning |
KAUST |
video |
Federated Minimax Optimization: Improved Convergence Analyses and Algorithms |
Carnegie Mellon University |
|
FedNest: Federated Bilevel, Minimax, and Compositional Optimization |
University of Michigan |
code |
Fishing for User Data in Large-Batch Federated Learning via Gradient Magnification |
University of Maryland |
code |
DisPFL: Towards Communication-Efficient Personalized Federated Learning via Decentralized Sparse Training |
University of Science and Technology of China |
code |
Federated Learning with Positive and Unlabeled Data |
Xi’an Jiaotong University |
|
Neurotoxin: Durable Backdoors in Federated Learning |
Southeast University; Princeton University |
code |
DAdaQuant: Doubly-adaptive quantization for communication-efficient Federated Learning |
University of Cambridge |
|
Neural Tangent Kernel Empowered Federated Learning |
NC State University |
code |
EDEN: Communication-Efficient and Robust Distributed Mean Estimation for Federated Learning |
VMware Research |
code |
Architecture Agnostic Federated Learning for Neural Networks |
The University of Texas at Austin |
|
Fast Composite Optimization and Statistical Recovery in Federated Learning |
Shanghai Jiao Tong University |
|
Personalization Improves Privacy-Accuracy Tradeoffs in Federated Learning |
New York University |
|
Communication-Efficient Adaptive Federated Learning |
Pennsylvania State University |
|
Personalized Federated Learning via Variational Bayesian Inference |
Chinese Academy of Sciences |
|
QSFL: A Two-Level Uplink Communication Optimization Framework for Federated Learning |
Nankai University |
code |
Understanding Clipping for Federated Learning: Convergence and Client-Level Differential Privacy |
University of Minnesota |
|
The Poisson Binomial Mechanism for Unbiased Federated Learning with Secure Aggregation |
Stanford University; Google Research |
|
The Fundamental Price of Secure Aggregation in Differentially Private Federated Learning |
Stanford University; Google Research |
code |
Disentangled Federated Learning for Tackling Attributes Skew via Invariant Aggregation and Diversity Transferring |
University of Science and Technology of China |
|
Federated Reinforcement Learning: Linear Speedup Under Markovian Sampling |
Geogia Institute of Technology |
|
Orchestra: Unsupervised Federated Learning via Globally Consistent Clustering |
University of Michigan |
code |
Resilient and Communication Efficient Learning for Heterogeneous Federated Systems |
Michigan State University |
|
Accelerated Federated Learning with Decoupled Adaptive Optimization |
Auburn University |
|
Proximal and Federated Random Reshuffling |
KAUST |
code |
Personalized Federated Learning through Local Memorization |
Inria |
code |
Federated Learning with Partial Model Personalization |
University of Washington |
code |
ProgFed: Effective, Communication, and Computation Efficient Federated Learning by Progressive Training |
CISPA Helmholz Center for Information Security |
code |
Federated Learning with Label Distribution Skew via Logits Calibration |
Zhejiang University |
|
Anarchic Federated Learning |
The Ohio State University |
|
Virtual Homogeneity Learning: Defending against Data Heterogeneity in Federated Learning |
Hong Kong Baptist University |
code |
Generalized Federated Learning via Sharpness Aware Minimization |
University of South Florida |
|
FedScale: Benchmarking Model and System Performance of Federated Learning at Scale |
University of Michigan |
code |
Multi-Level Branched Regularization for Federated Learning |
Seoul National University |
HomePage |
|
|
|
|
ICML 2021 |
Gradient Disaggregation: Breaking Privacy in Federated Learning by Reconstructing the User Participant Matrix |
Harvard University |
video code |
FL-NTK: A Neural Tangent Kernel-based Framework for Federated Learning Analysis |
Peking University; Princeton University |
video |
Personalized Federated Learning using Hypernetworks |
Bar-Ilan University; NVIDIA |
code HomePage video |
Federated Composite Optimization |
Stanford University; Google |
code video slides |
Exploiting Shared Representations for Personalized Federated Learning |
University of Texas at Austin; University of Pennsylvania |
code video |
Data-Free Knowledge Distillation for Heterogeneous Federated Learning |
Michigan State University |
code video |
Federated Continual Learning with Weighted Inter-client Transfer |
KAIST |
code video |
Federated Deep AUC Maximization for Hetergeneous Data with a Constant Communication Complexity |
The University of Iowa |
video |
Bias-Variance Reduced Local SGD for Less Heterogeneous Federated Learning |
The University of Tokyo |
video |
Federated Learning of User Verification Models Without Sharing Embeddings |
Qualcomm |
video |
Clustered Sampling: Low-Variance and Improved Representativity for Clients Selection in Federated Learning |
Accenture |
code video |
Ditto: Fair and Robust Federated Learning Through Personalization |
CMU; Facebook AI |
code video |
Heterogeneity for the Win: One-Shot Federated Clustering |
CMU |
video |
The Distributed Discrete Gaussian Mechanism for Federated Learning with Secure Aggregation |
Google |
video |
Debiasing Model Updates for Improving Personalized Federated Training |
Boston University; Arm |
video |
One for One, or All for All: Equilibria and Optimality of Collaboration in Federated Learning |
Toyota; Berkeley; Cornell University |
code video |
CRFL: Certifiably Robust Federated Learning against Backdoor Attacks |
UIUC; IBM |
code video |
Federated Learning under Arbitrary Communication Patterns |
Indiana University; Amazon |
video |
|
|
|
|
ICML 2020 |
FedBoost: A Communication-Efficient Algorithm for Federated Learning |
Google |
Video |
FetchSGD: Communication-Efficient Federated Learning with Sketching |
UC Berkeley; Johns Hopkins University; Amazon |
Video Code |
SCAFFOLD: Stochastic Controlled Averaging for Federated Learning |
EPFL; Google |
Video |
Federated Learning with
Only Positive Labels |
Google |
Video |
From Local SGD to Local Fixed-Point Methods for Federated Learning |
Moscow Institute of Physics and Technology; KAUST |
Slide Video |
Acceleration for Compressed Gradient Descent in Distributed and Federated Optimization |
KAUST |
Slide Video |
|
|
|
|
ICML 2019 |
Bayesian Nonparametric Federated Learning of Neural Networks |
IBM |
Code |
Analyzing Federated Learning through an Adversarial Lens |
Princeton University; IBM |
Code |
Agnostic Federated Learning |
Google |
|
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