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 46514700 of 6771 papers

TitleStatusHype
Towards Achieving Near-optimal Utility for Privacy-Preserving Federated Learning via Data Generation and Parameter Distortion0
Towards Active Participant-Centric Vertical Federated Learning: Some Representations May Be All You Need0
Towards a Distributed Federated Learning Aggregation Placement using Particle Swarm Intelligence0
Towards a Federated Learning Framework for Heterogeneous Devices of Internet of Things0
Towards an Accountable and Reproducible Federated Learning: A FactSheets Approach0
Towards Artificial General or Personalized Intelligence? A Survey on Foundation Models for Personalized Federated Intelligence0
Towards a Secure and Reliable Federated Learning using Blockchain0
Towards Bias Correction of FedAvg over Nonuniform and Time-Varying Communications0
Towards Bridging the FL Performance-Explainability Trade-Off: A Trustworthy 6G RAN Slicing Use-Case0
Towards Case-based Interpretability for Medical Federated Learning0
Towards Causal Federated Learning For Enhanced Robustness and Privacy0
Towards Client Driven Federated Learning0
Towards Collaborative Fairness in Federated Learning Under Imbalanced Covariate Shift0
Towards Collaborative Intelligence: Routability Estimation based on Decentralized Private Data0
Towards Communication Efficient and Fair Federated Personalized Sequential Recommendation0
Towards Communication-efficient Federated Learning via Sparse and Aligned Adaptive Optimization0
Towards Communication-efficient Vertical Federated Learning Training via Cache-enabled Local Updates0
Towards Communication-Learning Trade-off for Federated Learning at the Network Edge0
Towards Cooperative Federated Learning over Heterogeneous Edge/Fog Networks0
Towards Decentralized Predictive Quality of Service in Next-Generation Vehicular Networks0
Towards Deep Federated Defenses Against Malware in Cloud Ecosystems0
Towards Distributed Backdoor Attacks with Network Detection in Decentralized Federated Learning0
Towards Dynamic Resource Allocation and Client Scheduling in Hierarchical Federated Learning: A Two-Phase Deep Reinforcement Learning Approach0
Toward Secure and Private Over-the-Air Federated Learning0
Towards Effective Device-Aware Federated Learning0
Towards Efficient and Certified Recovery from Poisoning Attacks in Federated Learning0
Towards Efficient and Stable K-Asynchronous Federated Learning with Unbounded Stale Gradients on Non-IID Data0
Towards efficient compression and communication for prototype-based decentralized learning0
Towards Efficient Model-Heterogeneity Federated Learning for Large Models0
Towards Efficient Replay in Federated Incremental Learning0
Towards Efficient Scheduling of Federated Mobile Devices under Computational and Statistical Heterogeneity0
Towards Energy-Aware Federated Learning via MARL: A Dual-Selection Approach for Model and Client0
Towards Energy Efficient Distributed Federated Learning for 6G Networks0
Towards Energy Efficient Federated Learning over 5G+ Mobile Devices0
Towards Fairer and More Efficient Federated Learning via Multidimensional Personalized Edge Models0
Towards Fair Federated Learning with Zero-Shot Data Augmentation0
Towards Fair Federated Recommendation Learning: Characterizing the Inter-Dependence of System and Data Heterogeneity0
Towards Fairness in Provably Communication-Efficient Federated Recommender Systems0
Towards Fair, Robust and Efficient Client Contribution Evaluation in Federated Learning0
Towards Fast and Accurate Federated Learning with non-IID Data for Cloud-Based IoT Applications0
Towards Federated Clustering: A Federated Fuzzy c-Means Algorithm (FFCM)0
Towards Federated Domain Unlearning: Verification Methodologies and Challenges0
Towards Federated Graph Learning for Collaborative Financial Crimes Detection0
Towards Federated Learning-Enabled Visible Light Communication in 6G Systems0
Towards Federated Learning on Time-Evolving Heterogeneous Data0
Towards Federated Learning Under Resource Constraints via Layer-wise Training and Depth Dropout0
Towards Federated Learning with On-device Training and Communication in 8-bit Floating Point0
Towards Federated Long-Tailed Learning0
Towards Fleet-wide Sharing of Wind Turbine Condition Information through Privacy-preserving Federated Learning0
Towards Flexible Device Participation in Federated Learning0
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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