A Cyber Threat Intelligence Sharing Scheme based on Federated Learning for Network Intrusion Detection
Mohanad Sarhan, Siamak Layeghy, Nour Moustafa, Marius Portmann

TL;DR
This paper introduces a federated learning-based cyber threat intelligence sharing scheme that enables multiple organizations to collaboratively train network intrusion detection models while preserving data privacy, using heterogeneous network data sources.
Contribution
It proposes a novel federated learning framework for network intrusion detection that handles heterogeneous data formats and maintains privacy across organizations.
Findings
Effective classification of benign and intrusive traffic across organizations.
Federated learning outperforms local training in detection accuracy.
Maintains data privacy without sharing sensitive information.
Abstract
The uses of Machine Learning (ML) in detection of network attacks have been effective when designed and evaluated in a single organisation. However, it has been very challenging to design an ML-based detection system by utilising heterogeneous network data samples originating from several sources. This is mainly due to privacy concerns and the lack of a universal format of datasets. In this paper, we propose a collaborative federated learning scheme to address these issues. The proposed framework allows multiple organisations to join forces in the design, training, and evaluation of a robust ML-based network intrusion detection system. The threat intelligence scheme utilises two critical aspects for its application; the availability of network data traffic in a common format to allow for the extraction of meaningful patterns across data sources. Secondly, the adoption of a federated…
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Taxonomy
TopicsNetwork Security and Intrusion Detection · Internet Traffic Analysis and Secure E-voting · Privacy-Preserving Technologies in Data
