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Self-similarity based lightweight intrusion detection method

Authors
Kwon, HyukminKim, EunjinYu, Song JinKim, Huy Kang
Issue Date
11월-2011
Publisher
INT INFORMATION INST
Keywords
information security; self-similarity; lightweight; intrusion detection; anomaly detection
Citation
INFORMATION-AN INTERNATIONAL INTERDISCIPLINARY JOURNAL, v.14, no.11, pp.3683 - 3690
Indexed
SCIE
SCOPUS
Journal Title
INFORMATION-AN INTERNATIONAL INTERDISCIPLINARY JOURNAL
Volume
14
Number
11
Start Page
3683
End Page
3690
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/111193
ISSN
1343-4500
Abstract
There are many security concerns such as data leakage, unauthorized access from outside the system and abnormal activities from inside the system. To detect these system's abnormal activities or misuse by malicious attackers, intrusion detection system (IDS) is usually adopted. Even though detection algorithms and their performance are improved, IDS still consume system resources not ignorable. For providing high performance computing environment, lightweight anomaly detection method is needed today. In this paper, we propose self-similarity measures for lightweight IDS. For normal systems, a regular and periodic self-similarity can be observed in a system's internal activities such as system calls and process status. On the other hand, outliers occur when an anomalous attack happens, and then the system's self-similarity cannot be maintained. Therefore monitoring the changes of a system's self-similarity can be used to detect the system's anomalies. From this viewpoint, we developed a new measure based on cosine similarity and found the optimal time interval for estimating the self-similarity of a given system. As a result, we can detect abnormal activities using only a few resources.
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