A strategy to the reduction of communication overhead and overfitting in Federated Learning (original) (raw)

Federated Learning under Heterogeneous and Correlated Client Availability

angelo rodio

arXiv (Cornell University), 2023

View PDFchevron_right

Node Selection Toward Faster Convergence for Federated Learning on Non-IID Data

Hongda Wu

IEEE Transactions on Network Science and Engineering, 2022

View PDFchevron_right

FedGrad: Optimisation in Decentralised Machine Learning

Mann Patel

Cornell University - arXiv, 2022

View PDFchevron_right

CatFedAvg: Optimising Communication-efficiency and Classification Accuracy in Federated Learning

Ankur Narang

ArXiv, 2020

View PDFchevron_right

Federated Learning Aggregation: New Robust Algorithms with Guarantees

Gaia Carenini

Cornell University - arXiv, 2022

View PDFchevron_right

FedDec: Peer-to-peer Aided Federated Learning

Marina Costantini

arXiv (Cornell University), 2023

View PDFchevron_right

The Effect of Training Parameters and Mechanisms on Decentralized Federated Learning based on MNIST Dataset

Chaouki Abdallah

ArXiv, 2021

View PDFchevron_right

Migrating Models: A Decentralized View on Federated Learning

Tomas Horvath

Communications in Computer and Information Science, 2021

View PDFchevron_right

Federated Asymptotics: a model to compare federated learning algorithms

Karan Chadha

2021

View PDFchevron_right

A Survey on Challenges of Federated Learning

Samir Aliyev

Azerbaijan Journal of High Performance Computing

View PDFchevron_right

FedPerf: A Practitioners’ Guide to Performance of Federated Learning Algorithms

ayush agrawal

View PDFchevron_right

Straggler-Resilient Federated Learning: Leveraging the Interplay Between Statistical Accuracy and System Heterogeneity

Isidoros Tziotis

ArXiv, 2020

View PDFchevron_right

Federated Learning: A Cutting-Edge Survey of the Latest Advancements and Applications

Mohammad ali vahedifar

arXiv (Cornell University), 2023

View PDFchevron_right

Federated Learning Under Intermittent Client Availability and Time-Varying Communication Constraints

Gustavo de Veciana

IEEE Journal of Selected Topics in Signal Processing

View PDFchevron_right

Scalable federated machine learning with FEDn

Mattias Åkesson

2021

View PDFchevron_right

Fine-tuning in Federated Learning: a simple but tough-to-beat baseline

Karan Chadha

2021

View PDFchevron_right

Comparative assessment of federated and centralized machine learning

Aniruddha Bardhan

2022

View PDFchevron_right

FedControl: When Control Theory Meets Federated Learning

Gaia Carenini

2022

View PDFchevron_right

FedDRL: Deep Reinforcement Learning-based Adaptive Aggregation for Non-IID Data in Federated Learning

Hiếu Phạm

arXiv (Cornell University), 2022

View PDFchevron_right

Optimization in Federated Learning

Péter Kiss

2019

View PDFchevron_right

Federated Learning: Collaborative Machine Learning without Centralized Training Data

Vishal Thomas

international journal of engineering technology and management sciences

View PDFchevron_right

Robust Convergence in Federated Learning through Label-wise Clustering

Hunmin Lee

ArXiv, 2021

View PDFchevron_right

Communication-Efficient and Drift-Robust Federated Learning via Elastic Net

jiheon woo

arXiv (Cornell University), 2022

View PDFchevron_right

A Joint Communication and Learning Framework for Hierarchical Split Federated Learning

Ala Al-Fuqaha

View PDFchevron_right

Fully Distributed Federated Learning with Efficient Local Cooperations

Evangelos Georgatos

ICASSP 2023 - 2023 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP)

View PDFchevron_right

FLIX: A Simple and Communication-Efficient Alternative to Local Methods in Federated Learning

Ahmed Khaled

Cornell University - arXiv, 2021

View PDFchevron_right

Communication-Efficient Federated Learning via Robust Distributed Mean Estimation

Amit Portnoy

ArXiv, 2021

View PDFchevron_right

Optimized Federated Learning on Class-biased Distributed Data Sources

Yongli Mou

2021

View PDFchevron_right

Federated Machine Learning: Survey, Multi-Level Classification, Desirable Criteria and Future Directions in Communication and Networking Systems

Omar Abdel Wahab, Hadi Otrok, Azzam Mourad

IEEE Communications Surveys & Tutorials, 2021

View PDFchevron_right

Unifying Intelligence: Federated Learning in Cloud Environments for Decentralized Machine Learning

Srinivasa Rao Angajala

", International Journal of Science and Research (IJSR), , 2023

View PDFchevron_right