TY - JOUR
T1 - Integrating a Zero-Trust Adaptive Security Framework in Edge Based Federated Learning
AU - Shepherd, Paul
AU - Dagiuklas, Tasos
AU - Alkan, Bugra
AU - Rodriguez, Jonathan
PY - 2024/10/21
Y1 - 2024/10/21
N2 - Federated Learning (FL) allows multiple clients to collaboratively train a machine learning model without sharing their raw data, thus addressing privacy data concerns. The joint application of FL (Federated Learning) and MEC (Multi-Access Edge Computing) enables efficient utilization of computation and storage resources at the edge. By deploying the FL model at the edge, data are trained locally on the device or edge node, reducing latency, and facilitating real-time processing and decision-making, whilst also ensuring data privacy. However, the decentralized FL is subject to security and trust challenges, since MEC data may get poisoned. Therefore, ensuring the trustworthiness of clients is pivotal to ensure integrity and performance of FL models. This paper presents an adaptive Zero Trust framework which assumes no inherent trust in any client, is based on continuously verifying and validating the clients' behavior, to ensure that only reliable contributors (clients) are incorporated in the global model aggregation.
AB - Federated Learning (FL) allows multiple clients to collaboratively train a machine learning model without sharing their raw data, thus addressing privacy data concerns. The joint application of FL (Federated Learning) and MEC (Multi-Access Edge Computing) enables efficient utilization of computation and storage resources at the edge. By deploying the FL model at the edge, data are trained locally on the device or edge node, reducing latency, and facilitating real-time processing and decision-making, whilst also ensuring data privacy. However, the decentralized FL is subject to security and trust challenges, since MEC data may get poisoned. Therefore, ensuring the trustworthiness of clients is pivotal to ensure integrity and performance of FL models. This paper presents an adaptive Zero Trust framework which assumes no inherent trust in any client, is based on continuously verifying and validating the clients' behavior, to ensure that only reliable contributors (clients) are incorporated in the global model aggregation.
U2 - 10.1109/camad62243.2024.10942760
DO - 10.1109/camad62243.2024.10942760
M3 - Article
SP - 1
EP - 5
JO - 2024 IEEE 29th International Workshop on Computer Aided Modeling and Design of Communication Links and Networks (CAMAD)
JF - 2024 IEEE 29th International Workshop on Computer Aided Modeling and Design of Communication Links and Networks (CAMAD)
ER -