TY - GEN
T1 - Federated Mimic Learning for Privacy Preserving Intrusion Detection
AU - Al-Athba Al-Marri, Noor Ali
AU - Ciftler, Bekir S.
AU - Abdallah, Mohamed M.
N1 - Publisher Copyright:
© 2020 IEEE.
PY - 2020/5/26
Y1 - 2020/5/26
N2 - Internet of things (IoT) devices are prone to attacks due to the limitation of their privacy and security components. These attacks vary from exploiting backdoors to disrupting the communication network of the devices. Intrusion Detection Systems (IDS) play an essential role in ensuring information privacy and security of IoT devices against these attacks. Recently, deep learning-based IDS techniques are becoming more prominent due to their high classification accuracy. However, conventional deep learning techniques jeopardize user privacy due to the transfer of user data to a centralized server. Federated learning (FL) is a popular privacy-preserving decentralized learning method. FL enables training models locally at the edge devices and transferring local models to a centralized server instead of transferring sensitive data. Nevertheless, FL can suffer from reverse engineering ML attacks that can learn information about the user's data from model. To overcome the problem of reverse engineering, mimic learning is another way to preserve the privacy of ML-based IDS. In mimic learning, a student model is trained with the public dataset, which is labeled with the teacher model that is trained by sensitive user data. In this work, we propose a novel approach that combines the advantages of FL and mimic learning, namely federated mimic learning to create a distributed IDS while minimizing the risk of jeopardizing users' privacy, and benchmark its performance compared to other ML-based IDS techniques using NSL-KDD dataset. Our results show that we can achieve 98.11% detection accuracy with federated mimic learning.
AB - Internet of things (IoT) devices are prone to attacks due to the limitation of their privacy and security components. These attacks vary from exploiting backdoors to disrupting the communication network of the devices. Intrusion Detection Systems (IDS) play an essential role in ensuring information privacy and security of IoT devices against these attacks. Recently, deep learning-based IDS techniques are becoming more prominent due to their high classification accuracy. However, conventional deep learning techniques jeopardize user privacy due to the transfer of user data to a centralized server. Federated learning (FL) is a popular privacy-preserving decentralized learning method. FL enables training models locally at the edge devices and transferring local models to a centralized server instead of transferring sensitive data. Nevertheless, FL can suffer from reverse engineering ML attacks that can learn information about the user's data from model. To overcome the problem of reverse engineering, mimic learning is another way to preserve the privacy of ML-based IDS. In mimic learning, a student model is trained with the public dataset, which is labeled with the teacher model that is trained by sensitive user data. In this work, we propose a novel approach that combines the advantages of FL and mimic learning, namely federated mimic learning to create a distributed IDS while minimizing the risk of jeopardizing users' privacy, and benchmark its performance compared to other ML-based IDS techniques using NSL-KDD dataset. Our results show that we can achieve 98.11% detection accuracy with federated mimic learning.
KW - Federated Learning
KW - Internet of Things
KW - Intrusion Detection Systems
KW - Mimic Learning
KW - Privacy-Preserving
UR - https://www.scopus.com/pages/publications/85096644034
U2 - 10.1109/BlackSeaCom48709.2020.9234959
DO - 10.1109/BlackSeaCom48709.2020.9234959
M3 - Conference contribution
AN - SCOPUS:85096644034
T3 - 2020 IEEE International Black Sea Conference on Communications and Networking, BlackSeaCom 2020
BT - 2020 IEEE International Black Sea Conference on Communications and Networking, BlackSeaCom 2020
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 2020 IEEE International Black Sea Conference on Communications and Networking, BlackSeaCom 2020
Y2 - 26 May 2020 through 29 May 2020
ER -