When federated learning meets privacy-preserving computation
J Chen, H Yan, Z Liu, M Zhang, H **ong… - ACM Computing Surveys, 2024 - dl.acm.org
Nowadays, with the development of artificial intelligence (AI), privacy issues attract wide
attention from society and individuals. It is desirable to make the data available but invisible …
attention from society and individuals. It is desirable to make the data available but invisible …
Differential privacy for deep and federated learning: A survey
Users' privacy is vulnerable at all stages of the deep learning process. Sensitive information
of users may be disclosed during data collection, during training, or even after releasing the …
of users may be disclosed during data collection, during training, or even after releasing the …
Privacy-preserving aggregation in federated learning: A survey
Over the recent years, with the increasing adoption of Federated Learning (FL) algorithms
and growing concerns over personal data privacy, Privacy-Preserving Federated Learning …
and growing concerns over personal data privacy, Privacy-Preserving Federated Learning …
Local differential privacy and its applications: A comprehensive survey
With the rapid development of low-cost consumer electronics and pervasive adoption of next
generation wireless communication technologies, a tremendous amount of data has been …
generation wireless communication technologies, a tremendous amount of data has been …
PVD-FL: A privacy-preserving and verifiable decentralized federated learning framework
Over the past years, the increasingly severe data island problem has spawned an emerging
distributed deep learning framework—federated learning, in which the global model can be …
distributed deep learning framework—federated learning, in which the global model can be …
ReFRS: Resource-efficient federated recommender system for dynamic and diversified user preferences
Owing to its nature of scalability and privacy by design, federated learning (FL) has received
increasing interest in decentralized deep learning. FL has also facilitated recent research on …
increasing interest in decentralized deep learning. FL has also facilitated recent research on …
A systematic review of federated learning: Challenges, aggregation methods, and development tools
Since its inception in 2016, federated learning has evolved into a highly promising decentral-
ized machine learning approach, facilitating collaborative model training across numerous …
ized machine learning approach, facilitating collaborative model training across numerous …
No free lunch theorem for security and utility in federated learning
In a federated learning scenario where multiple parties jointly learn a model from their
respective data, there exist two conflicting goals for the choice of appropriate algorithms. On …
respective data, there exist two conflicting goals for the choice of appropriate algorithms. On …
3dfed: Adaptive and extensible framework for covert backdoor attack in federated learning
Federated Learning (FL), the de-facto distributed machine learning paradigm that locally
trains datasets at individual devices, is vulnerable to backdoor model poisoning attacks. By …
trains datasets at individual devices, is vulnerable to backdoor model poisoning attacks. By …
One parameter defense—defending against data inference attacks via differential privacy
Machine learning models are vulnerable to data inference attacks, such as membership
inference and model inversion attacks. In these types of breaches, an adversary attempts to …
inference and model inversion attacks. In these types of breaches, an adversary attempts to …