SOTAVerified

Federated Learning

Federated Learning is a machine learning approach that allows multiple devices or entities to collaboratively train a shared model without exchanging their data with each other. Instead of sending data to a central server for training, the model is trained locally on each device, and only the model updates are sent to the central server, where they are aggregated to improve the shared model.

This approach allows for privacy-preserving machine learning, as each device keeps its data locally and only shares the information needed to improve the model.

Papers

Showing 401450 of 6771 papers

TitleStatusHype
Federated Unlearning Made Practical: Seamless Integration via Negated Pseudo-GradientsCode0
Federated Neural Architecture Search with Model-Agnostic Meta Learning0
mixEEG: Enhancing EEG Federated Learning for Cross-subject EEG Classification with Tailored mixupCode1
Federated Hierarchical Reinforcement Learning for Adaptive Traffic Signal Control0
SparsyFed: Sparse Adaptive Federated TrainingCode0
Embedded Federated Feature Selection with Dynamic Sparse Training: Balancing Accuracy-Cost Tradeoffs0
FedSAUC: A Similarity-Aware Update Control for Communication-Efficient Federated Learning in Edge Computing0
Towards Optimal Heterogeneous Client Sampling in Multi-Model Federated Learning0
Federated Learning for Medical Image Classification: A Comprehensive Benchmark0
A Novel Algorithm for Personalized Federated Learning: Knowledge Distillation with Weighted Combination Loss0
WeiDetect: Weibull Distribution-Based Defense against Poisoning Attacks in Federated Learning for Network Intrusion Detection Systems0
Scaling Federated Learning Solutions with Kubernetes for Synthesizing Histopathology ImagesCode0
Corrected with the Latest Version: Make Robust Asynchronous Federated Learning Possible0
Hierarchical Knowledge Structuring for Effective Federated Learning in Heterogeneous Environments0
Enhancing Air Quality Monitoring: A Brief Review of Federated Learning Advances0
Integrating Identity-Based Identification against Adaptive Adversaries in Federated Learning0
Secure Generalization through Stochastic Bidirectional Parameter Updates Using Dual-Gradient Mechanism0
Tree-based Models for Vertical Federated Learning: A Survey0
On Model Protection in Federated Learning against Eavesdropping Attacks0
Like Oil and Water: Group Robustness Methods and Poisoning Defenses May Be at Odds0
Client Selection in Federated Learning with Data Heterogeneity and Network Latencies0
A Two-Timescale Approach for Wireless Federated Learning with Parameter Freezing and Power Control0
CO-DEFEND: Continuous Decentralized Federated Learning for Secure DoH-Based Threat DetectionCode0
Sky of Unlearning (SoUL): Rewiring Federated Machine Unlearning via Selective Pruning0
A Randomized Zeroth-Order Hierarchical Framework for Heterogeneous Federated Learning0
Efficient Federated Learning Tiny Language Models for Mobile Network Feature PredictionCode2
Informed Greedy Algorithm for Scalable Bayesian Network Fusion via Minimum Cut AnalysisCode0
Global Intervention and Distillation for Federated Out-of-Distribution Generalization0
FedPaI: Achieving Extreme Sparsity in Federated Learning via Pruning at Initialization0
Personalized Federated Training of Diffusion Models with Privacy Guarantees0
Exploring Personalized Federated Learning Architectures for Violence Detection in Surveillance Videos0
Benchmarking Federated Machine Unlearning methods for Tabular Data0
EMO: Edge Model Overlays to Scale Model Size in Federated Learning0
Few-Shot Generation of Brain Tumors for Secure and Fair Data Sharing0
Federated Learning for Cross-Domain Data Privacy: A Distributed Approach to Secure Collaboration0
Communication-Efficient and Personalized Federated Foundation Model Fine-Tuning via Tri-Matrix Adaptation0
Federated Structured Sparse PCA for Anomaly Detection in IoT Networks0
Advanced Deep Learning and Large Language Models: Comprehensive Insights for Cancer Detection0
Federated Self-Supervised Learning for One-Shot Cross-Modal and Cross-Imaging Technique Segmentation0
A Systematic Decade Review of Trip Route Planning with Travel Time Estimation based on User Preferences and Behavior0
Two Heads Are Better than One: Model-Weight and Latent-Space Analysis for Federated Learning on Non-iid Data against Poisoning Attacks0
Buffer is All You Need: Defending Federated Learning against Backdoor Attacks under Non-iids via Buffering0
Multi-Agent Reinforcement Learning for Graph Discovery in D2D-Enabled Federated Learning0
Enhancing Federated Learning Through Secure Cluster-Weighted Client Aggregation0
FLIP: Towards Comprehensive and Reliable Evaluation of Federated Prompt LearningCode1
The Cost of Local and Global Fairness in Federated LearningCode0
Resource-Efficient Federated Fine-Tuning Large Language Models for Heterogeneous Data0
Provable Reduction in Communication Rounds for Non-Smooth Convex Federated Learning0
Federated Learning with Differential Privacy: An Utility-Enhanced Approach0
Energy Minimization for Participatory Federated Learning in IoT Analyzed via Game Theory0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1SiloBN + ASAMmIoU49.75Unverified
2SiloBN + SAMmIoU49.1Unverified
3SiloBNmIoU45.96Unverified
4FedSAM + SWAmIoU43.42Unverified
5FedASAM + SWAmIoU43.02Unverified
6FedAvg + SWAmIoU42.48Unverified
7FedASAMmIoU42.27Unverified
8FedSAMmIoU41.22Unverified
9FedAvgmIoU38.65Unverified
#ModelMetricClaimedVerifiedStatus
1FedASAM + SWAAcc@1-1262Clients68.32Unverified
2FedSAM + SWAAcc@1-1262Clients68.12Unverified
3FedAvg + SWAAcc@1-1262Clients67.52Unverified
4FedASAMAcc@1-1262Clients64.23Unverified
5FedSAMAcc@1-1262Clients63.72Unverified
6FedAvgAcc@1-1262Clients61.91Unverified
#ModelMetricClaimedVerifiedStatus
1FedASAM + SWAACC@1-100Clients42.64Unverified
2FedASAMACC@1-100Clients39.76Unverified
3FedSAM + SWAACC@1-100Clients39.51Unverified
4FedSAMACC@1-100Clients36.93Unverified
5FedAvgACC@1-100Clients36.74Unverified
#ModelMetricClaimedVerifiedStatus
1FedASAM + SWAACC@1-100Clients41.62Unverified
2FedASAMACC@1-100Clients40.81Unverified
3FedSAM + SWAACC@1-100Clients39.24Unverified
4FedAvgACC@1-100Clients38.59Unverified
5FedSAMACC@1-100Clients38.56Unverified
#ModelMetricClaimedVerifiedStatus
1FedASAM + SWAACC@1-100Clients48.72Unverified
2FedSAM + SWAACC@1-100Clients46.76Unverified
3FedASAMACC@1-100Clients46.58Unverified
4FedSAMACC@1-100Clients44.84Unverified
5FedAvgACC@1-100Clients41.27Unverified
#ModelMetricClaimedVerifiedStatus
1FedASAM + SWAACC@1-100Clients48.27Unverified
2FedASAMACC@1-100Clients47.78Unverified
3FedSAM + SWAACC@1-100Clients46.47Unverified
4FedSAMACC@1-100Clients46.05Unverified
5FedAvgACC@1-100Clients42.17Unverified
#ModelMetricClaimedVerifiedStatus
1FedASAM + SWAACC@1-100Clients49.17Unverified
2FedSAM + SWAACC@1-100Clients47.96Unverified
3FedASAMACC@1-100Clients45.61Unverified
4FedSAMACC@1-100Clients44.73Unverified
5FedAvgACC@1-100Clients40.43Unverified
#ModelMetricClaimedVerifiedStatus
1FedASAM + SWAACC@1-100Clients42.01Unverified
2FedSAM + SWAACC@1-100Clients39.3Unverified
3FedASAMACC@1-100Clients36.04Unverified
4FedSAMACC@1-100Clients31.04Unverified
5FedAvgACC@1-100Clients30.25Unverified
#ModelMetricClaimedVerifiedStatus
1FedASAMACC@1-100Clients54.97Unverified
2FedASAM + SWAACC@1-100Clients54.79Unverified
3FedSAM + SWAACC@1-100Clients53.67Unverified
4FedSAMACC@1-100Clients53.39Unverified
5FedAvgACC@1-100Clients50.25Unverified
#ModelMetricClaimedVerifiedStatus
1FedASAMACC@1-100Clients54.5Unverified
2FedSAM + SWAACC@1-100Clients54.36Unverified
3FedASAM + SWAACC@1-100Clients54.1Unverified
4FedSAMACC@1-100Clients53.97Unverified
5FedAvgACC@1-100Clients50.66Unverified
#ModelMetricClaimedVerifiedStatus
1FedASAMACC@1-100Clients54.81Unverified
2FedSAMACC@1-100Clients54.01Unverified
3FedSAM + SWAACC@1-100Clients53.9Unverified
4FedASAM + SWAACC@1-100Clients53.86Unverified
5FedAvgACC@1-100Clients49.92Unverified
#ModelMetricClaimedVerifiedStatus
1AdaBestAverage Top-1 Accuracy56.2Unverified