Mohd Rafiz Salji, Nur Izura Udzir, Mohd Izuan Hafez Ninggal, Nor Fazlida Mohd. Sani, Hamidah Ibrahim
언어
영어(ENG)
URL
https://www.earticle.net/Article/A298081
※ 원문제공기관과의 협약기간이 종료되어 열람이 제한될 수 있습니다.
원문정보
초록
영어
Anomaly detection under Cloud computing environment plays an important role in detecting anomalous virtual machines (VMs) before real failures occur. In order to accurately characterize the new trend of VMs' performance, new samples are collected, detected, and selectively added into the training sample set. The newly added samples are used for updating the detection model, so as to improve detection accuracy. However, increasing number of training samples causes both much storage space and CPU time. To overcome this challenge, this article proposes an anomaly detection algorithm based on online learning Lagrangian SVM (termed OLLSVM) for detecting anomalous VMs. Online learning includes incremental learning and decremental learning. Single-sample and batch incremental learning algorithms are designed to update the detection model when adding a single sample or a set of samples. Similarly, single-sample and batch decremental learning algorithms are designed for deleting a single sample or a set of samples. The strategies for selecting sample(s) to be added or deleted are also designed. This article conducts experiments on Cloud datasets and KDD Cup datasets. The experimental results show that, compared with traditional Lagrangian SVM (LSVM) which retrains the detection model each time when adding or deleting sample(s), OLLSVM achieves almost similar high detection accuracy but much higher time efficiency.
목차
Abstract 1. Introduction 2. Related work 3. Lagrangian SVM (LSVM) 4. The proposed anomaly detection algorithm - OLLSVM 4.1. Incremental learning 4.2. Decremental learning 4.3. The proposed OLLSVM algorithm 5. Experiments and analyses 5.1. Datasets 5.2. Experimental results and analyses 6. Conclusion and future work References
키워드
Cloud ComputingVirtual MachineVMAnomaly DetectionLagrangian Support Vector MachineLSVMOnline Learning
저자
Mohd Rafiz Salji [ Faculty of Computer Science and Information Technology, Universiti Putra Malaysia / Faculty of Information Management, Universiti Teknologi MARA, Malaysia ]
corresponding Author
Nur Izura Udzir [ Faculty of Computer Science and Information Technology, Universiti Putra Malaysia ]
Mohd Izuan Hafez Ninggal [ Faculty of Computer Science and Information Technology, Universiti Putra Malaysia ]
Nor Fazlida Mohd. Sani [ Faculty of Computer Science and Information Technology, Universiti Putra Malaysia ]
Hamidah Ibrahim [ Faculty of Computer Science and Information Technology, Universiti Putra Malaysia ]
보안공학연구지원센터(IJSIA) [Science & Engineering Research Support Center, Republic of Korea(IJSIA)]
설립연도
2006
분야
공학>컴퓨터학
소개
1. 보안공학에 대한 각종 조사 및 연구
2. 보안공학에 대한 응용기술 연구 및 발표
3. 보안공학에 관한 각종 학술 발표회 및 전시회 개최
4. 보안공학 기술의 상호 협조 및 정보교환
5. 보안공학에 관한 표준화 사업 및 규격의 제정
6. 보안공학에 관한 산학연 협동의 증진
7. 국제적 학술 교류 및 기술 협력
8. 보안공학에 관한 논문지 발간
9. 기타 본 회 목적 달성에 필요한 사업
간행물
간행물명
International Journal of Security and Its Applications
간기
격월간
pISSN
1738-9976
수록기간
2008~2016
등재여부
SCOPUS
십진분류
KDC 505DDC 605
이 권호 내 다른 논문 / International Journal of Security and Its Applications Vol.10 No.12