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PF-TL: Payload Feature-Based Transfer Learning for Dealing with the Lack of Training Data

Authors
Jung, IlokLim, JonginKim, Huy Kang
Issue Date
5월-2021
Publisher
MDPI
Keywords
knowledge transfer; intrusion detection; machine learning; payloads; transfer learning
Citation
ELECTRONICS, v.10, no.10
Indexed
SCIE
SCOPUS
Journal Title
ELECTRONICS
Volume
10
Number
10
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/128145
DOI
10.3390/electronics10101148
ISSN
2079-9292
Abstract
The number of studies on applying machine learning to cyber security has increased over the past few years. These studies, however, are facing difficulties with making themselves usable in the real world, mainly due to the lack of training data and reusability of a created model. While transfer learning seems like a solution to these problems, the number of studies in the field of intrusion detection is still insufficient. Therefore, this study proposes payload feature-based transfer learning as a solution to the lack of training data when applying machine learning to intrusion detection by using the knowledge from an already known domain. Firstly, it expands the extracting range of information from header to payload to accurately deliver the information by using an effective hybrid feature extraction method. Secondly, this study provides an improved optimization method for the extracted features to create a labeled dataset for a target domain. This proposal was validated on publicly available datasets, using three distinctive scenarios, and the results confirmed its usability in practice by increasing the accuracy of the training data created from the transfer learning by 30%, compared to that of the non-transfer learning method. In addition, we showed that this approach can help in identifying previously unknown attacks and reusing models from different domains.
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