Pham, T.S. and Uy Nguyen, Q. and Nguyen, X.H. (2014) Generating artificial attack data for intrusion detection using machine learning. In: 5th Symposium on Information and Communication Technology, SoICT 2014, 4 December 2014 through 5 December 2014.
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Abstract
Intrusion detection based upon machine learning is currently attracting considerable interests from the research community. One of the appealing properties of machine learning based intrusion detection systems is their ability to detect new and unknown attacks. In order to apply machine learning to intrusion detection, a large number of both attack and normal data samples need to be collected. While, it is often easier to sample benign data based on the normal behaviors of networks, intrusive data is much more scarce, therefore more difficult to collect. In this paper, we propose a novel solution to this problem by generating artificial attack data for intrusion detection based on machine learning techniques. Various machine learning techniques are used to evaluate the effectiveness of the generated data and the results show that the data set of synthetic attack data combining with normal one can help machine learning methods to achieve good performance on intrusion detection problem. Copyright 2014 ACM.
Item Type: | Conference or Workshop Item (Paper) |
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Divisions: | Faculties > Faculty of Information Technology |
Identification Number: | 10.1145/2676585.2676618 |
Uncontrolled Keywords: | Artificial intelligence; Learning algorithms; Learning systems; Mercury (metal); Artificial Attack; Data sample; Intrusion Detection Systems; Machine learning methods; Machine learning techniques; Normal behavior; Research communities; Unknown attacks; Intrusion detection |
Additional Information: | Conference code: 119304. Language of original document: English. |
URI: | http://eprints.lqdtu.edu.vn/id/eprint/9971 |