Enhancing Transferability using Federated Learning for ML-based Network Intrusion Detection
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Department of Computer Science and Engineering(CSE), Islamic University of Technology(IUT), Board Bazar, Gazipur-1704, Bangladesh
Abstract
Network Intrusion Detection Systems (NIDS) are critical for securing network-connected
devices, yet their ability to detect novel attacks remains limited due to poor transferability
across attack classes. This thesis explores federated learning (FL) to enhance transferability
in NIDS, addressing privacy and data heterogeneity challenges in cross-device settings.
Using the CIC-IDS 2017 dataset, we implemented FedAdam and Fedprox, two different
Federated Learning Techniques, toimproveconvergenceoverthebaselineFedAvgalgorithm
in a federated setup. Experiments revealed that FedAdam and FedProx yield improvements
in validation accuracy. We also used Synthetic Minority Oversampling Technique (SMOTE)
other thanBootstrapping for classbalancing, simulaterealisticvariationsandimprovemodel
robustness. These methods aim to better tackle non-IID data and class imbalance, critical
for transferability. This study underscores the potential of FL in NIDS, offering a foundation
for developing models that can generalize across diverse attack classes while preserving
privacy, with future work focusing on optimizing adaptive methods and integrating more
diverse datasets.
Description
Supervised by
Dr. MdMoniruzzaman,
Assistant Professor,
Department of Computer Science and Engineering (CSE)
Islamic University of Technology (IUT)
Board Bazar, Gazipur, Bangladesh
This thesis is submitted in partial fulfillment of the requirement for the degree of Bachelor of Science in Computer Science and Engineering, 2025
