Federated Learning

Enhancing Data Provenance and Model Transparency in Federated Learning Systems — A Database Approach

Authors: Michael Gu, Ramasoumya Naraparaju, Dongfang Zhao | Published: 2024-03-03
Data Origins and Evolution
Poisoning
Federated Learning

Analysis of Privacy Leakage in Federated Large Language Models

Authors: Minh N. Vu, Truc Nguyen, Tre' R. Jeter, My T. Thai | Published: 2024-03-02
Privacy Protection Method
Poisoning
Federated Learning

Defending Against Data Reconstruction Attacks in Federated Learning: An Information Theory Approach

Authors: Qi Tan, Qi Li, Yi Zhao, Zhuotao Liu, Xiaobing Guo, Ke Xu | Published: 2024-03-02
Privacy Protection Method
Poisoning
Federated Learning

Federated Learning on Transcriptomic Data: Model Quality and Performance Trade-Offs

Authors: Anika Hannemann, Jan Ewald, Leo Seeger, Erik Buchmann | Published: 2024-02-22
Data Privacy Assessment
Data Preprocessing
Federated Learning

Federated Bayesian Network Ensembles

Authors: Florian van Daalen, Lianne Ippel, Andre Dekker, Inigo Bermejo | Published: 2024-02-19
Bayesian Classification
Model Design
Federated Learning

A chaotic maps-based privacy-preserving distributed deep learning for incomplete and Non-IID datasets

Authors: Irina Arévalo, Jose L. Salmeron | Published: 2024-02-15
Privacy Protection Method
Cryptography
Federated Learning

FedRDF: A Robust and Dynamic Aggregation Function against Poisoning Attacks in Federated Learning

Authors: Enrique Mármol Campos, Aurora González Vidal, José Luis Hernández Ramos, Antonio Skarmeta | Published: 2024-02-15
Poisoning
Attack Method
Federated Learning

An advanced data fabric architecture leveraging homomorphic encryption and federated learning

Authors: Sakib Anwar Rieyan, Md. Raisul Kabir News, A. B. M. Muntasir Rahman, Sadia Afrin Khan, Sultan Tasneem Jawad Zaarif, Md. Golam Rabiul Alam, Mohammad Mehedi Hassan, Michele Ianni, Giancarlo Fortino | Published: 2024-02-15
Privacy Protection
Medical Image Analysis
Federated Learning

FedSiKD: Clients Similarity and Knowledge Distillation: Addressing Non-i.i.d. and Constraints in Federated Learning

Authors: Yousef Alsenani, Rahul Mishra, Khaled R. Ahmed, Atta Ur Rahman | Published: 2024-02-14
Client Clustering
Clustering methods
Federated Learning

FedMIA: An Effective Membership Inference Attack Exploiting “All for One” Principle in Federated Learning

Authors: Gongxi Zhu, Donghao Li, Hanlin Gu, Yuan Yao, Lixin Fan, Yuxing Han | Published: 2024-02-09 | Updated: 2025-03-27
Poisoning
Membership Inference
Federated Learning