• Title/Summary/Keyword: Botnet Detection

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Comparison of HMM and SVM schemes in detecting mobile Botnet (모바일 봇넷 탐지를 위한 HMM과 SVM 기법의 비교)

  • Choi, Byungha;Cho, Kyungsan
    • Journal of the Korea Society of Computer and Information
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    • v.19 no.4
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    • pp.81-90
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    • 2014
  • As mobile devices have become widely used and developed, PC based malwares can be moving towards mobile-based units. In particular, mobile Botnet reuses powerful malicious behavior of PC-based Botnet or add new malicious techniques. Different from existing PC-based Botnet detection schemes, mobile Botnet detection schemes are generally host-based. It is because mobile Botnet has various attack vectors and it is difficult to inspect all the attack vector at the same time. In this paper, to overcome limitations of host-based scheme, we compare two network-based schemes which detect mobile Botnet by applying HMM and SVM techniques. Through the verification analysis under real Botnet attacks, we present detection rates and detection properties of two schemes.

Comparison and Analysis of P2P Botnet Detection Schemes

  • Cho, Kyungsan;Ye, Wujian
    • Journal of the Korea Society of Computer and Information
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    • v.22 no.3
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    • pp.69-79
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    • 2017
  • In this paper, we propose our four-phase life cycle of P2P botnet with corresponding detection methods and the future direction for more effective P2P botnet detection. Our proposals are based on the intensive analysis that compares existing P2P botnet detection schemes in different points of view such as life cycle of P2P botnet, machine learning methods for data mining based detection, composition of data sets, and performance matrix. Our proposed life cycle model composed of linear sequence stages suggests to utilize features in the vulnerable phase rather than the entire life cycle. In addition, we suggest the hybrid detection scheme with data mining based method and our proposed life cycle, and present the improved composition of experimental data sets through analysing the limitations of previous works.

Selection of Detection Measure using Traffic Analysis of Each Malicious Botnet (악성 봇넷 별 트래픽 분석을 통한 탐지 척도 선정)

  • Jang, Dae-Il;Kim, Min-Soo;Jung, Hyun-Chul;Noh, Bong-Nam
    • Journal of the Korea Institute of Information Security & Cryptology
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    • v.21 no.3
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    • pp.37-44
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    • 2011
  • Recently malicious activities that is a DDoS, spam, propagation of malware, steeling person information, phishing on the Internet are related malicious botnet. To detect malicious botnet, Many researchers study a detection system for malicious botnet, but these applies specific protocol, action or attack based botnet. In this reason, we study a selection of measurement to detec malicious botnet in this paper. we collect a traffic of malicious botnet and analyze it for feature of network traffic. And we select a feature based measurement. we expect to help a detection of malicious botnet through this study.

Android Botnet Detection Using Hybrid Analysis

  • Mamoona Arhsad;Ahmad Karim
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • v.18 no.3
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    • pp.704-719
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    • 2024
  • Botnet pandemics are becoming more prevalent with the growing use of mobile phone technologies. Mobile phone technologies provide a wide range of applications, including entertainment, commerce, education, and finance. In addition, botnet refers to the collection of compromised devices managed by a botmaster and engaging with each other via a command server to initiate an attack including phishing email, ad-click fraud, blockchain, and much more. As the number of botnet attacks rises, detecting harmful activities is becoming more challenging in handheld devices. Therefore, it is crucial to evaluate mobile botnet assaults to find the security vulnerabilities that occur through coordinated command servers causing major financial and ethical harm. For this purpose, we propose a hybrid analysis approach that integrates permissions and API and experiments on the machine-learning classifiers to detect mobile botnet applications. In this paper, the experiment employed benign, botnet, and malware applications for validation of the performance and accuracy of classifiers. The results conclude that a classifier model based on a simple decision tree obtained 99% accuracy with a low 0.003 false-positive rate than other machine learning classifiers for botnet applications detection. As an outcome of this paper, a hybrid approach enhances the accuracy of mobile botnet detection as compared to static and dynamic features when both are taken separately.

Analysis and Detection Mechanism of Botnet on 6LoWPAN (6LoWPAN 상에서의 Botnet 분석 및 탐지 메커니즘)

  • Cho, Eung Jun;Hong, Choong Seon
    • Proceedings of the Korea Information Processing Society Conference
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    • 2009.04a
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    • pp.1497-1499
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    • 2009
  • 최근 들어 스팸 메일, 키 로깅, DDoS와 같은 공격에 Botnet이 사용되고 있다. Botnet은 크래커에 의해 명령, 제어되는 Bot에 감염된 클라이언트로 이루어진 네트워크이다. 지금까지 유선망의 Botnet을 탐지하기 위한 많은 기법이 제안되었지만, 현재 많은 개발이 이루어지고 있는 6LoWPAN과 같은 무선 센서 네트워크상의 Botnet에 관한 연구와 그 대처방안은 전무한 상태이다. 본 논문에서는 6LoWPAN 환경에서 Botnet이 얼마나 위험할 수 있는지 살펴보고 이를 탐지하기 위한 메커니즘을 제안하고자 한다.

A Smart Framework for Mobile Botnet Detection Using Static Analysis

  • Anwar, Shahid;Zolkipli, Mohamad Fadli;Mezhuyev, Vitaliy;Inayat, Zakira
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • v.14 no.6
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    • pp.2591-2611
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    • 2020
  • Botnets have become one of the most significant threats to Internet-connected smartphones. A botnet is a combination of infected devices communicating through a command server under the control of botmaster for malicious purposes. Nowadays, the number and variety of botnets attacks have increased drastically, especially on the Android platform. Severe network disruptions through massive coordinated attacks result in large financial and ethical losses. The increase in the number of botnet attacks brings the challenges for detection of harmful software. This study proposes a smart framework for mobile botnet detection using static analysis. This technique combines permissions, activities, broadcast receivers, background services, API and uses the machine-learning algorithm to detect mobile botnets applications. The prototype was implemented and used to validate the performance, accuracy, and scalability of the proposed framework by evaluating 3000 android applications. The obtained results show the proposed framework obtained 98.20% accuracy with a low 0.1140 false-positive rate.

Scalable P2P Botnet Detection with Threshold Setting in Hadoop Framework (하둡 프레임워크에서 한계점 가변으로 확장성이 가능한 P2P 봇넷 탐지 기법)

  • Huseynov, Khalid;Yoo, Paul D.;Kim, Kwangjo
    • Journal of the Korea Institute of Information Security & Cryptology
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    • v.25 no.4
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    • pp.807-816
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    • 2015
  • During the last decade most of coordinated security breaches are performed by the means of botnets, which is a large overlay network of compromised computers being controlled by remote botmaster. Due to high volumes of traffic to be analyzed, the challenge is posed by managing tradeoff between system scalability and accuracy. We propose a novel Hadoop-based P2P botnet detection method solving the problem of scalability and having high accuracy. Moreover, our approach is characterized not to require labeled data and applicable to encrypted traffic as well.

A Deep Learning Approach with Stacking Architecture to Identify Botnet Traffic

  • Kang, Koohong
    • Journal of the Korea Society of Computer and Information
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    • v.26 no.12
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    • pp.123-132
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    • 2021
  • Malicious activities of Botnets are responsible for huge financial losses to Internet Service Providers, companies, governments and even home users. In this paper, we try to confirm the possibility of detecting botnet traffic by applying the deep learning model Convolutional Neural Network (CNN) using the CTU-13 botnet traffic dataset. In particular, we classify three classes, such as the C&C traffic between bots and C&C servers to detect C&C servers, traffic generated by bots other than C&C communication to detect bots, and normal traffic. Performance metrics were presented by accuracy, precision, recall, and F1 score on classifying both known and unknown botnet traffic. Moreover, we propose a stackable botnet detection system that can load modules for each botnet type considering scalability and operability on the real field.

B-Corr Model for Bot Group Activity Detection Based on Network Flows Traffic Analysis

  • Hostiadi, Dandy Pramana;Wibisono, Waskitho;Ahmad, Tohari
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • v.14 no.10
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    • pp.4176-4197
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    • 2020
  • Botnet is a type of dangerous malware. Botnet attack with a collection of bots attacking a similar target and activity pattern is called bot group activities. The detection of bot group activities using intrusion detection models can only detect single bot activities but cannot detect bots' behavioral relation on bot group attack. Detection of bot group activities could help network administrators isolate an activity or access a bot group attacks and determine the relations between bots that can measure the correlation. This paper proposed a new model to measure the similarity between bot activities using the intersections-probability concept to define bot group activities called as B-Corr Model. The B-Corr model consisted of several stages, such as extraction feature from bot activity flows, measurement of intersections between bots, and similarity value production. B-Corr model categorizes similar bots with a similar target to specify bot group activities. To achieve a more comprehensive view, the B-Corr model visualizes the similarity values between bots in the form of a similar bot graph. Furthermore, extensive experiments have been conducted using real botnet datasets with high detection accuracy in various scenarios.

Implementation Of DDoS Botnet Detection System On Local Area Network (근거리 통신망에서의 DDoS 봇넷 탐지 시스템 구현)

  • Huh, Jun-Ho;Hong, Myeong-Ho;Lee, JeongMin;Seo, Kyungryong
    • Journal of Korea Multimedia Society
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    • v.16 no.6
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    • pp.678-688
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    • 2013
  • Different Different from a single attack, in DDoS Attacks, the botnets that are distributed on network initiate attacks against the target server simultaneously. In such cases, it is difficult to take an action while denying the access of packets that are regarded as DDoS since normal user's convenience should also be considered at the target server. Taking these considerations into account, the DDoS botnet detection system that can reduce the strain on the target server by detecting DDoS attacks on each user network basis, and then lets the network administrator to take actions that reduce overall scale of botnets, has been implemented in this study. The DDoS botnet detection system proposed by this study implemented the program which detects attacks based on the database composed of faults and abnormalities collected through analyzation of hourly attack traffics. The presence of attack was then determined using the threshold of current traffic calculated with the standard deviation and the mean number of packets. By converting botnet-based detection method centering around the servers that become the targets of attacks to the network based detection, it was possible to contemplate aggressive defense concept against DDoS attacks. With such measure, the network administrator can cut large scale traffics of which could be referred as the differences between DDoS and DoS attacks, in advance mitigating the scale of botnets. Furthermore, we expect to have an effect that can considerably reduce the strain imposed on the target servers and the network loads of routers in WAN communications if the traffic attacks can be blocked beforehand in the network communications under the router equipment level.