ITL-IDS: Incremental Transfer Learning for Intrusion Detection Systems

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Utilizing machine learning methods to detect intrusion into computer networks is a trending topic in information security research. The limitation of labeled samples is one of the challenges in this area. This challenge makes it difficult to build accurate learning models for intrusion detection. Transfer learning is one of the methods to counter such a challenge in machine learning topics. On the other hand, the emergence of new technologies and applications might bring new vulnerabilities to computer networks. Therefore, the learning process cannot occur all at once. Incremental learning is a practical standpoint to confront this challenge. This research presents a new framework for intrusion detection systems called ITL-IDS that can potentially start learning in a network without prior knowledge. It begins with an incremental clustering algorithm to detect clusters’ numbers and shape without prior assumptions about the attacks. The outcomes are candidates to transfer knowledge between other instances of ITL-IDS. In each iteration, transfer learning provides target environments with incremental knowledge. Our evaluation shows that this method can combine incremental and transfer learning to identify new attacks.

论文关键词:Network security,Intrusion detection system,NIDS,Transfer learning,Incremental learning

论文评审过程:Received 9 September 2021, Revised 20 July 2022, Accepted 22 July 2022, Available online 28 July 2022, Version of Record 8 August 2022.

论文官网地址:https://doi.org/10.1016/j.knosys.2022.109542