Secure Federated Learning in 5G Mobile Networks
- URL: http://arxiv.org/abs/2004.06700v2
- Date: Mon, 14 Sep 2020 08:15:08 GMT
- Title: Secure Federated Learning in 5G Mobile Networks
- Authors: Martin Isaksson, Karl Norrman
- Abstract summary: We integrate Federated Learning (FL) into the 3GPP 5G Network Data Analytics (NWDA) architecture.
We add a Multi-Party Computation (MPC) protocol for protecting the confidentiality of local updates.
We evaluate the protocol and find that it has much lower overhead than previous work, without affecting ML performance.
- Score: 2.4366811507669124
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Machine Learning (ML) is an important enabler for optimizing, securing and
managing mobile networks. This leads to increased collection and processing of
data from network functions, which in turn may increase threats to sensitive
end-user information. Consequently, mechanisms to reduce threats to end-user
privacy are needed to take full advantage of ML. We seamlessly integrate
Federated Learning (FL) into the 3GPP 5G Network Data Analytics (NWDA)
architecture, and add a Multi-Party Computation (MPC) protocol for protecting
the confidentiality of local updates. We evaluate the protocol and find that it
has much lower overhead than previous work, without affecting ML performance.
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