• Title/Summary/Keyword: Anomaly Intrusion

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A Design of FHIDS(Fuzzy logic based Hybrid Intrusion Detection System) using Naive Bayesian and Data Mining (나이브 베이지안과 데이터 마이닝을 이용한 FHIDS(Fuzzy Logic based Hybrid Intrusion Detection System) 설계)

  • Lee, Byung-Kwan;Jeong, Eun-Hee
    • The Journal of Korea Institute of Information, Electronics, and Communication Technology
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    • v.5 no.3
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    • pp.158-163
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    • 2012
  • This paper proposes an FHIDS(Fuzzy logic based Hybrid Intrusion Detection System) design that detects anomaly and misuse attacks by using a Naive Bayesian algorithm, Data Mining, and Fuzzy Logic. The NB-AAD(Naive Bayesian based Anomaly Attack Detection) technique using a Naive Bayesian algorithm within the FHIDS detects anomaly attacks. The DM-MAD(Data Mining based Misuse Attack Detection) technique using Data Mining within it analyzes the correlation rules among packets and detects new attacks or transformed attacks by generating the new rule-based patterns or by extracting the transformed rule-based patterns. The FLD(Fuzzy Logic based Decision) technique within it judges the attacks by using the result of the NB-AAD and DM-MAD. Therefore, the FHIDS is the hybrid attack detection system that improves a transformed attack detection ratio, and reduces False Positive ratio by making it possible to detect anomaly and misuse attacks.

An Architecture for Efficient Intrusion Detection System of Abnormal Traffic (비정상 트래픽 상황에서 효율적 침입 탐지 시스템(EIDS) 구조 연구)

  • Kwon, Young-Jae;Lee, Du-Man;Yim, Hong-Bin;Jung, Jae-Il
    • Proceedings of the IEEK Conference
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    • 2006.06a
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    • pp.207-208
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    • 2006
  • Intrusion detection technology is highlighted in order to establish a safe information-oriented environment. Intrusion detection system can be categorized into anomaly detection and misuse detection according to intrusion detection pattern. In this paper, we propose an architecture to make up for the defect of conventional anomaly intrusion detection. This architecture reduces additional resource consumption and cost by placing the agent in the strategic location in Internet.

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Real-time Intrusion-Detection Parallel System for the Prevention of Anomalous Computer Behaviours (비정상적인 컴퓨터 행위 방지를 위한 실시간 침입 탐지 병렬 시스템에 관한 연구)

  • 유은진;전문석
    • Review of KIISC
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    • v.5 no.2
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    • pp.32-48
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    • 1995
  • Our paper describes an Intrusion Detection Parallel System(IDPS) which detects an anomaly activity corresponding to the actions that interaction between near detection events. IDES uses parallel inductive approaches regarding the problem of real-time anomaly behavior detection on rule-based system. This approach uses sequential rule that describes user's behavior and characteristics dependent on time. and that audits user's activities by using rule base as data base to store user's behavior pattern. When user's activity deviates significantly from expected behavior described in rule base. anomaly behaviors are recorded. Observed behavior is flagged as a potential intrusion if it deviates significantly from the expected behavior or if it triggers a rule in the parallel inductive system.

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Network Intrusion Detection with One Class Anomaly Detection Model based on Auto Encoder. (오토 인코더 기반의 단일 클래스 이상 탐지 모델을 통한 네트워크 침입 탐지)

  • Min, Byeoungjun;Yoo, Jihoon;Kim, Sangsoo;Shin, Dongil;Shin, Dongkyoo
    • Journal of Internet Computing and Services
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    • v.22 no.1
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    • pp.13-22
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    • 2021
  • Recently network based attack technologies are rapidly advanced and intelligent, the limitations of existing signature-based intrusion detection systems are becoming clear. The reason is that signature-based detection methods lack generalization capabilities for new attacks such as APT attacks. To solve these problems, research on machine learning-based intrusion detection systems is being actively conducted. However, in the actual network environment, attack samples are collected very little compared to normal samples, resulting in class imbalance problems. When a supervised learning-based anomaly detection model is trained with such data, the result is biased to the normal sample. In this paper, we propose to overcome this imbalance problem through One-Class Anomaly Detection using an auto encoder. The experiment was conducted through the NSL-KDD data set and compares the performance with the supervised learning models for the performance evaluation of the proposed method.

(Effective Intrusion Detection Integrating Multiple Measure Models) (다중척도 모델의 결합을 이용한 효과적 인 침입탐지)

  • 한상준;조성배
    • Journal of KIISE:Information Networking
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    • v.30 no.3
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    • pp.397-406
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    • 2003
  • As the information technology grows interests in the intrusion detection system (IDS), which detects unauthorized usage, misuse by a local user and modification of important data, has been raised. In the field of anomaly-based IDS several artificial intelligence techniques such as hidden Markov model (HMM), artificial neural network, statistical techniques and expert systems are used to model network rackets, system call audit data, etc. However, there are undetectable intrusion types for each measure and modeling method because each intrusion type makes anomalies at individual measure. To overcome this drawback of single-measure anomaly detector, this paper proposes a multiple-measure intrusion detection method. We measure normal behavior by systems calls, resource usage and file access events and build up profiles for normal behavior with hidden Markov model, statistical method and rule-base method, which are integrated with a rule-based approach. Experimental results with real data clearly demonstrate the effectiveness of the proposed method that has significantly low false-positive error rate against various types of intrusion.

An Effective Anomaly Detection Approach based on Hybrid Unsupervised Learning Technologies in NIDS

  • Kangseok Kim
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • v.18 no.2
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    • pp.494-510
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    • 2024
  • Internet users are exposed to sophisticated cyberattacks that intrusion detection systems have difficulty detecting. Therefore, research is increasing on intrusion detection methods that use artificial intelligence technology for detecting novel cyberattacks. Unsupervised learning-based methods are being researched that learn only from normal data and detect abnormal behaviors by finding patterns. This study developed an anomaly-detection method based on unsupervised machines and deep learning for a network intrusion detection system (NIDS). We present a hybrid anomaly detection approach based on unsupervised learning techniques using the autoencoder (AE), Isolation Forest (IF), and Local Outlier Factor (LOF) algorithms. An oversampling approach that increased the detection rate was also examined. A hybrid approach that combined deep learning algorithms and traditional machine learning algorithms was highly effective in setting the thresholds for anomalies without subjective human judgment. It achieved precision and recall rates respectively of 88.2% and 92.8% when combining two AEs, IF, and LOF while using an oversampling approach to learn more unknown normal data improved the detection accuracy. This approach achieved precision and recall rates respectively of 88.2% and 94.6%, further improving the detection accuracy compared with the hybrid method. Therefore, in NIDS the proposed approach provides high reliability for detecting cyberattacks.

An Intrusion Detection Method Based on Changes of Antibody Concentration in Immune Response

  • Zhang, Ruirui;Xiao, Xin
    • Journal of Information Processing Systems
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    • v.15 no.1
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    • pp.137-150
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    • 2019
  • Although the research of immune-based anomaly detection technology has made some progress, there are still some defects which have not been solved, such as the loophole problem which leads to low detection rate and high false alarm rate, the exponential relationship between training cost of mature detectors and size of self-antigens. This paper proposed an intrusion detection method based on changes of antibody concentration in immune response to improve and solve existing problems of immune based anomaly detection technology. The method introduces blood relative and blood family to classify antibodies and antigens and simulate correlations between antibodies and antigens. Then, the method establishes dynamic evolution models of antigens and antibodies in intrusion detection. In addition, the method determines concentration changes of antibodies in the immune system drawing the experience of cloud model, and divides the risk levels to guide immune responses. Experimental results show that the method has better detection performance and adaptability than traditional methods.

Anomaly-Based Network Intrusion Detection: An Approach Using Ensemble-Based Machine Learning Algorithm

  • Kashif Gul Chachar;Syed Nadeem Ahsan
    • International Journal of Computer Science & Network Security
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    • v.24 no.1
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    • pp.107-118
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    • 2024
  • With the seamless growth of the technology, network usage requirements are expanding day by day. The majority of electronic devices are capable of communication, which strongly requires a secure and reliable network. Network-based intrusion detection systems (NIDS) is a new method for preventing and alerting computers and networks from attacks. Machine Learning is an emerging field that provides a variety of ways to implement effective network intrusion detection systems (NIDS). Bagging and Boosting are two ensemble ML techniques, renowned for better performance in the learning and classification process. In this paper, the study provides a detailed literature review of the past work done and proposed a novel ensemble approach to develop a NIDS system based on the voting method using bagging and boosting ensemble techniques. The test results demonstrate that the ensemble of bagging and boosting through voting exhibits the highest classification accuracy of 99.98% and a minimum false positive rate (FPR) on both datasets. Although the model building time is average which can be a tradeoff by processor speed.

AN ANOMALY DETECTION METHOD BY ASSOCIATIVE CLASSIFICATION

  • Lee, Bum-Ju;Lee, Heon-Gyu;Ryu, Keun-Ho
    • Proceedings of the KSRS Conference
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    • 2005.10a
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    • pp.301-304
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    • 2005
  • For detecting an intrusion based on the anomaly of a user's activities, previous works are concentrated on statistical techniques or frequent episode mining in order to analyze an audit data. But, since they mainly analyze the average behaviour of user's activities, some anomalies can be detected inaccurately. Therefore, we propose an anomaly detection method that utilizes an associative classification for modelling intrusion detection. Finally, we proof that a prediction model built from associative classification method yields better accuracy than a prediction model built from a traditional methods by experimental results.

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A Study on the Design of IPS with Expanded IDS Functions (확장된 IDS 기능을 간진 IPS 설계에 관한 연구)

  • 나호준;최진호;김창수;박근덕
    • Proceedings of the Korea Multimedia Society Conference
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    • 2002.05d
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    • pp.951-954
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    • 2002
  • 최근의 침입탐지시스템(IDS: Intrusion Detection System) 기술동향은 Misuse 방식의 규칙 데이터베이스 변경에 대한 한계성 때문에 Anomaly 방식의 NIDS(Network IDS)에 대한 연구가 고려되고 있다. 현재 국내에서 개발된 기존의 제품들은 대부분 Misuse 방식을 채택하고 있으며, 향후 국제 경쟁력을 갖추기 위해서는 Anomaly 방식의 기술 연구가 필요하다. 본 연구에서는 본 연구실에서 개발한 NIDS를 기반으로 연관 마이닝을 이용한 비정상 탐지 문제, 내부 정보 유출 차단 등에 대한 통합된 시스템 설계 방향을 제시하여 국가기관이나 기업이 보다 안전하게 침입을 관리할 수 있는 IPS(Intrusion Prevention System) 시스템을 설계한다.

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