Concept drift detection and adaptation for federated and continual learning

05/27/2021
by   Fernando E. Casado, et al.
6

Smart devices, such as smartphones, wearables, robots, and others, can collect vast amounts of data from their environment. This data is suitable for training machine learning models, which can significantly improve their behavior, and therefore, the user experience. Federated learning is a young and popular framework that allows multiple distributed devices to train deep learning models collaboratively while preserving data privacy. Nevertheless, this approach may not be optimal for scenarios where data distribution is non-identical among the participants or changes over time, causing what is known as concept drift. Little research has yet been done in this field, but this kind of situation is quite frequent in real life and poses new challenges to both continual and federated learning. Therefore, in this work, we present a new method, called Concept-Drift-Aware Federated Averaging (CDA-FedAvg). Our proposal is an extension of the most popular federated algorithm, Federated Averaging (FedAvg), enhancing it for continual adaptation under concept drift. We empirically demonstrate the weaknesses of regular FedAvg and prove that CDA-FedAvg outperforms it in this type of scenario.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/24/2022

Addressing Client Drift in Federated Continual Learning with Adaptive Optimization

Federated learning has been extensively studied and is the prevalent met...
research
11/14/2021

Attentive Federated Learning for Concept Drift in Distributed 5G Edge Networks

Machine learning (ML) is expected to play a major role in 5G edge comput...
research
09/09/2021

A distillation-based approach integrating continual learning and federated learning for pervasive services

Federated Learning, a new machine learning paradigm enhancing the use of...
research
11/26/2021

Non-IID data and Continual Learning processes in Federated Learning: A long road ahead

Federated Learning is a novel framework that allows multiple devices or ...
research
01/14/2022

Decentralized Robot Learning for Personalization and Privacy

From learning assistance to companionship, social robots promise to enha...
research
06/12/2020

Collaborative and continual learning for classification tasks in a society of devices

Today we live in a context in which devices are increasingly interconnec...
research
05/15/2023

FLARE: Detection and Mitigation of Concept Drift for Federated Learning based IoT Deployments

Intelligent, large-scale IoT ecosystems have become possible due to rece...

Please sign up or login with your details

Forgot password? Click here to reset