In Machine Learning, the emergence of \textit{the right to be forgotten} gave birth to a paradigm named \textit{machine unlearning}, which enables data holders to proactively erase their data from a trained model. Existing machine unlearning techniques focus on centralized training, where access to all holders' training data is a must for the server to conduct the unlearning process. It remains largely underexplored about how to achieve unlearning when full access to all training data becomes unavailable. One noteworthy example is Federated Learning (FL), where each participating data holder trains locally, without sharing their training data to the central server. In this paper, we investigate the problem of machine unlearning in FL system...
Unlearning the data observed during the training of a machine learning (ML) model is an important ta...
The era of machine learning has prospered quickly although it has rather a short history. Massive cu...
Machine learning models benefit from large and diverse training datasets. However, it is difficult f...
With privacy legislation empowering users with the right to be forgotten, it has become essential to...
Federated learning (FL) is a collaborative learning paradigm where participants jointly train a powe...
The aim of Machine Unlearning (MU) is to provide theoretical guarantees on the removal of the contri...
The aim of Machine Unlearning (MU) is to provide theoretical guarantees on the removal of the contri...
Abstract—Today’s systems produce a rapidly exploding amount of data, and the data further derives mo...
Machine unlearning has become an important area of research due to an increasing need for machine le...
Modern privacy regulations grant citizens the right to be forgotten by products, services and compan...
To protect users' right to be forgotten in federated learning, federated unlearning aims at eliminat...
The right to be forgotten states that a data subject has the right to erase their data from an entit...
Deep machine unlearning is the problem of 'removing' from a trained neural network a subset of its t...
Federated learning (FL) is a hot collaborative training framework via aggregating model parameters o...
Federated learning is a hot topic in the recent years due to the increased in emphasis for data pri...
Unlearning the data observed during the training of a machine learning (ML) model is an important ta...
The era of machine learning has prospered quickly although it has rather a short history. Massive cu...
Machine learning models benefit from large and diverse training datasets. However, it is difficult f...
With privacy legislation empowering users with the right to be forgotten, it has become essential to...
Federated learning (FL) is a collaborative learning paradigm where participants jointly train a powe...
The aim of Machine Unlearning (MU) is to provide theoretical guarantees on the removal of the contri...
The aim of Machine Unlearning (MU) is to provide theoretical guarantees on the removal of the contri...
Abstract—Today’s systems produce a rapidly exploding amount of data, and the data further derives mo...
Machine unlearning has become an important area of research due to an increasing need for machine le...
Modern privacy regulations grant citizens the right to be forgotten by products, services and compan...
To protect users' right to be forgotten in federated learning, federated unlearning aims at eliminat...
The right to be forgotten states that a data subject has the right to erase their data from an entit...
Deep machine unlearning is the problem of 'removing' from a trained neural network a subset of its t...
Federated learning (FL) is a hot collaborative training framework via aggregating model parameters o...
Federated learning is a hot topic in the recent years due to the increased in emphasis for data pri...
Unlearning the data observed during the training of a machine learning (ML) model is an important ta...
The era of machine learning has prospered quickly although it has rather a short history. Massive cu...
Machine learning models benefit from large and diverse training datasets. However, it is difficult f...