Sequential Informed Federated Unlearning: Efficient and Provable Client Unlearning in Federated Optimization

11/21/2022
by   Yann Fraboni, et al.
0

The aim of Machine Unlearning (MU) is to provide theoretical guarantees on the removal of the contribution of a given data point from a training procedure. Federated Unlearning (FU) consists in extending MU to unlearn a given client's contribution from a federated training routine. Current FU approaches are generally not scalable, and do not come with sound theoretical quantification of the effectiveness of unlearning. In this work we present Informed Federated Unlearning (IFU), a novel efficient and quantifiable FU approach. Upon unlearning request from a given client, IFU identifies the optimal FL iteration from which FL has to be reinitialized, with unlearning guarantees obtained through a randomized perturbation mechanism. The theory of IFU is also extended to account for sequential unlearning requests. Experimental results on different tasks and dataset show that IFU leads to more efficient unlearning procedures as compared to basic re-training and state-of-the-art FU approaches.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/03/2023

Forgettable Federated Linear Learning with Certified Data Removal

Federated learning (FL) is a trending distributed learning framework tha...
research
02/26/2021

Efficient Client Contribution Evaluation for Horizontal Federated Learning

In federated learning (FL), fair and accurate measurement of the contrib...
research
09/12/2021

Federated Ensemble Model-based Reinforcement Learning

Federated learning (FL) is a privacy-preserving machine learning paradig...
research
06/04/2021

FedCCEA : A Practical Approach of Client Contribution Evaluation for Federated Learning

Client contribution evaluation, also known as data valuation, is a cruci...
research
07/26/2021

On The Impact of Client Sampling on Federated Learning Convergence

While clients' sampling is a central operation of current state-of-the-a...
research
09/30/2022

Fed-CBS: A Heterogeneity-Aware Client Sampling Mechanism for Federated Learning via Class-Imbalance Reduction

Due to limited communication capacities of edge devices, most existing f...

Please sign up or login with your details

Forgot password? Click here to reset