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  • About
  • The Global ETD Search service is a free service for researchers to find electronic theses and dissertations. This service is provided by the Networked Digital Library of Theses and Dissertations.
    Our metadata is collected from universities around the world. If you manage a university/consortium/country archive and want to be added, details can be found on the NDLTD website.
71

Intrusion and Fraud Detection using Multiple Machine Learning Algorithms

Peters, Chad 22 August 2013 (has links)
New methods of attacking networks are being invented at an alarming rate, and pure signature detection cannot keep up. The ability of intrusion detection systems to generalize to new attacks based on behavior is of increasing value. Machine Learning algorithms have been successfully applied to intrusion and fraud detection; however the time and accuracy tradeoffs between algorithms are not always considered when faced with such a broad range of choices. This thesis explores the time and accuracy metrics of a wide variety of machine learning algorithms, using a purpose-built supervised learning dataset. Topics covered include dataset dimensionality reduction through pre-processing techniques, training and testing times, classification accuracy, and performance tradeoffs. Further, ensemble learning and meta-classification are used to explore combinations of the algorithms and derived data sets, to examine the effects of homogeneous and heterogeneous aggregations. The results of this research are presented with observations and guidelines for choosing learning schemes in this domain.
72

Peer to peer botnet detection based on flow intervals and fast flux network capture

Zhao, David 16 October 2012 (has links)
Botnets are becoming the predominant threat on the Internet today and is the primary vector for carrying out attacks against organizations and individuals. Botnets have been used in a variety of cybercrime, from click-fraud to DDOS attacks to the generation of spam. In this thesis we propose an approach to detect botnet activity using two different strategies both based on machine learning techniques. In one, we examine the network flow based metrics of potential botnet traffic and show that we are able to detect botnets with only data from a small time interval of operation. For our second technique, we use a similar strategy to identify botnets based on their potential fast flux behavior. For both techniques, we show experimentally that the presence of botnets may be detected with a high accuracy and identify their potential limitations. / Graduate
73

Técnicas de detecção de Sniffers / Sniffer detection techniques

Casagrande, Rogério Antônio January 2003 (has links)
A área de Detecção de Intrusão, apesar de muito pesquisada, não responde a alguns problemas reais como níveis de ataques, dim ensão e complexidade de redes, tolerância a falhas, autenticação e privacidade, interoperabilidade e padronização. Uma pesquisa no Instituto de Informática da UFRGS, mais especificamente no Grupo de Segurança (GSEG), visa desenvolver um Sistema de Detecção de Intrusão Distribuído e com características de tolerância a falhas. Este projeto, denominado Asgaard, é a idealização de um sistema cujo objetivo não se restringe apenas a ser mais uma ferramenta de Detecção de Intrusão, mas uma plataforma que possibilite agregar novos módulos e técnicas, sendo um avanço em relação a outros Sistemas de Detecção atualmente em desenvolvimento. Um tópico ainda não abordado neste projeto seria a detecção de sniffers na rede, vindo a ser uma forma de prevenir que um ataque prossiga em outras estações ou redes interconectadas, desde que um intruso normalmente instala um sniffer após um ataque bem sucedido. Este trabalho discute as técnicas de detecção de sniffers, seus cenários, bem como avalia o uso destas técnicas em uma rede local. As técnicas conhecidas são testadas em um ambiente com diferentes sistemas operacionais, como linux e windows, mapeando os resultados sobre a eficiência das mesmas em condições diversas. / The area of Intrusion Detection, although widely searched, does not answer to some real problems as the level of attacks, dimension and complexity of networks, fault tolerance, authentication and privacy, interoperability and standardization. A current research at the Institute of Computer Science of UFRGS, more specifically in the Security Group (GSEG), aims at developing a Distributed Intrusion Detection System with features of fault tolerance. This project, called Asgaard, is the accomplishment of a system whose objective is not only restricted to be another tool concerning Intrusion Detection, but also a platform that makes possible to add new modules and techniques, which is an advance with respect to other Intrusion Detection Systems in progress. A point which has not yet been investigated in this project would be the network sniffer detection, which is supposed to be a way to prevent that an attack proceeds to other hosts and interconnected networks, once a intruder usually installs a sniffer after a well-performed attack. This work explores the sniffers detection techniques, their sets, as well as verifies these techniques in a local area network. The known techniques are tested in an environment with different operating systems, as linux and windows, explaining the results on the efficiency of these systems in several conditions.
74

Técnicas de detecção de Sniffers / Sniffer detection techniques

Casagrande, Rogério Antônio January 2003 (has links)
A área de Detecção de Intrusão, apesar de muito pesquisada, não responde a alguns problemas reais como níveis de ataques, dim ensão e complexidade de redes, tolerância a falhas, autenticação e privacidade, interoperabilidade e padronização. Uma pesquisa no Instituto de Informática da UFRGS, mais especificamente no Grupo de Segurança (GSEG), visa desenvolver um Sistema de Detecção de Intrusão Distribuído e com características de tolerância a falhas. Este projeto, denominado Asgaard, é a idealização de um sistema cujo objetivo não se restringe apenas a ser mais uma ferramenta de Detecção de Intrusão, mas uma plataforma que possibilite agregar novos módulos e técnicas, sendo um avanço em relação a outros Sistemas de Detecção atualmente em desenvolvimento. Um tópico ainda não abordado neste projeto seria a detecção de sniffers na rede, vindo a ser uma forma de prevenir que um ataque prossiga em outras estações ou redes interconectadas, desde que um intruso normalmente instala um sniffer após um ataque bem sucedido. Este trabalho discute as técnicas de detecção de sniffers, seus cenários, bem como avalia o uso destas técnicas em uma rede local. As técnicas conhecidas são testadas em um ambiente com diferentes sistemas operacionais, como linux e windows, mapeando os resultados sobre a eficiência das mesmas em condições diversas. / The area of Intrusion Detection, although widely searched, does not answer to some real problems as the level of attacks, dimension and complexity of networks, fault tolerance, authentication and privacy, interoperability and standardization. A current research at the Institute of Computer Science of UFRGS, more specifically in the Security Group (GSEG), aims at developing a Distributed Intrusion Detection System with features of fault tolerance. This project, called Asgaard, is the accomplishment of a system whose objective is not only restricted to be another tool concerning Intrusion Detection, but also a platform that makes possible to add new modules and techniques, which is an advance with respect to other Intrusion Detection Systems in progress. A point which has not yet been investigated in this project would be the network sniffer detection, which is supposed to be a way to prevent that an attack proceeds to other hosts and interconnected networks, once a intruder usually installs a sniffer after a well-performed attack. This work explores the sniffers detection techniques, their sets, as well as verifies these techniques in a local area network. The known techniques are tested in an environment with different operating systems, as linux and windows, explaining the results on the efficiency of these systems in several conditions.
75

Técnicas de detecção de Sniffers / Sniffer detection techniques

Casagrande, Rogério Antônio January 2003 (has links)
A área de Detecção de Intrusão, apesar de muito pesquisada, não responde a alguns problemas reais como níveis de ataques, dim ensão e complexidade de redes, tolerância a falhas, autenticação e privacidade, interoperabilidade e padronização. Uma pesquisa no Instituto de Informática da UFRGS, mais especificamente no Grupo de Segurança (GSEG), visa desenvolver um Sistema de Detecção de Intrusão Distribuído e com características de tolerância a falhas. Este projeto, denominado Asgaard, é a idealização de um sistema cujo objetivo não se restringe apenas a ser mais uma ferramenta de Detecção de Intrusão, mas uma plataforma que possibilite agregar novos módulos e técnicas, sendo um avanço em relação a outros Sistemas de Detecção atualmente em desenvolvimento. Um tópico ainda não abordado neste projeto seria a detecção de sniffers na rede, vindo a ser uma forma de prevenir que um ataque prossiga em outras estações ou redes interconectadas, desde que um intruso normalmente instala um sniffer após um ataque bem sucedido. Este trabalho discute as técnicas de detecção de sniffers, seus cenários, bem como avalia o uso destas técnicas em uma rede local. As técnicas conhecidas são testadas em um ambiente com diferentes sistemas operacionais, como linux e windows, mapeando os resultados sobre a eficiência das mesmas em condições diversas. / The area of Intrusion Detection, although widely searched, does not answer to some real problems as the level of attacks, dimension and complexity of networks, fault tolerance, authentication and privacy, interoperability and standardization. A current research at the Institute of Computer Science of UFRGS, more specifically in the Security Group (GSEG), aims at developing a Distributed Intrusion Detection System with features of fault tolerance. This project, called Asgaard, is the accomplishment of a system whose objective is not only restricted to be another tool concerning Intrusion Detection, but also a platform that makes possible to add new modules and techniques, which is an advance with respect to other Intrusion Detection Systems in progress. A point which has not yet been investigated in this project would be the network sniffer detection, which is supposed to be a way to prevent that an attack proceeds to other hosts and interconnected networks, once a intruder usually installs a sniffer after a well-performed attack. This work explores the sniffers detection techniques, their sets, as well as verifies these techniques in a local area network. The known techniques are tested in an environment with different operating systems, as linux and windows, explaining the results on the efficiency of these systems in several conditions.
76

ARCA - Alerts root cause analysis framework

Melo, Daniel Araújo 08 September 2014 (has links)
Submitted by Luiza Maria Pereira de Oliveira (luiza.oliveira@ufpe.br) on 2015-05-15T14:58:14Z No. of bitstreams: 2 license_rdf: 1232 bytes, checksum: 66e71c371cc565284e70f40736c94386 (MD5) DISSERTAÇÃO Daniel Araújo Melo.pdf: 2348702 bytes, checksum: cdf9ac0421311267960355f9d6ca4479 (MD5) / Made available in DSpace on 2015-05-15T14:58:14Z (GMT). No. of bitstreams: 2 license_rdf: 1232 bytes, checksum: 66e71c371cc565284e70f40736c94386 (MD5) DISSERTAÇÃO Daniel Araújo Melo.pdf: 2348702 bytes, checksum: cdf9ac0421311267960355f9d6ca4479 (MD5) Previous issue date: 2014-09-08 / Modern virtual plagues, or malwares, have focused on internal host infection and em-ploy evasive techniques to conceal itself from antivirus systems and users. Traditional network security mechanisms, such as Firewalls, IDS (Intrusion Detection Systems) and Antivirus Systems, have lost efficiency when fighting malware propagation. Recent researches present alternatives to detect malicious traffic and malware propagation through traffic analysis, however, the presented results are based on experiments with biased artificial traffic or traffic too specific to generalize, do not consider the existence of background traffic related with local network services or demands previous knowledge of networks infrastructure. Specifically don’t consider a well-known intru-sion detection systems problem, the high false positive rate which may be responsible for 99% of total alerts. This dissertation proposes a framework (ARCA – Alerts Root Cause Analysis) capable of guide a security engineer, or system administrator, to iden-tify alerts root causes, malicious or not, and allow the identification of malicious traffic and false positives. Moreover, describes modern malwares propagation mechanisms, presents methods to detect malwares through analysis of IDS alerts and false positives reduction. ARCA combines an aggregation method based on Relative Uncertainty with Apriori, a frequent itemset mining algorithm. Tests with 2 real datasets show an 88% reduction in the amount of alerts to be analyzed without previous knowledge of network infrastructure.
77

Adversarial Deep Learning Against Intrusion Detection Classifiers

Rigaki, Maria January 2017 (has links)
Traditional approaches in network intrusion detection follow a signature-based ap- proach, however the use of anomaly detection approaches based on machine learning techniques have been studied heavily for the past twenty years. The continuous change in the way attacks are appearing, the volume of attacks, as well as the improvements in the big data analytics space, make machine learning approaches more alluring than ever. The intention of this thesis is to show that using machine learning in the intrusion detection domain should be accompanied with an evaluation of its robustness against adversaries. Several adversarial techniques have emerged lately from the deep learning research, largely in the area of image classification. These techniques are based on the idea of introducing small changes in the original input data in order to make a machine learning model to misclassify it. This thesis follows a big data Analytics methodol- ogy and explores adversarial machine learning techniques that have emerged from the deep learning domain, against machine learning classifiers used for network intrusion detection. The study looks at several well known classifiers and studies their performance under attack over several metrics, such as accuracy, F1-score and receiver operating character- istic. The approach used assumes no knowledge of the original classifier and examines both general and targeted misclassification. The results show that using relatively sim- ple methods for generating adversarial samples it is possible to lower the detection accuracy of intrusion detection classifiers from 5% to 28%. Performance degradation is achieved using a methodology that is simpler than previous approaches and it re- quires only 6.25% change between the original and the adversarial sample, making it a candidate for a practical adversarial approach.
78

Anomaly-Based Detection of Malicious Activity in In-Vehicle Networks

Taylor, Adrian January 2017 (has links)
Modern automobiles have been proven vulnerable to hacking by security researchers. By exploiting vulnerabilities in the car's external interfaces, attackers can access a car's controller area network (CAN) bus and cause malicious effects. We seek to detect these attacks on the bus as a last line of defence against automotive cyber attacks. The CAN bus standard defines a low-level message structure, upon which manufacturers layer their own proprietary command protocols; attacks must similarly be tailored for their target. This variability makes intrusion detection methods difficult to apply to the automotive CAN bus. Nevertheless, the bus traffic is generated by machines; thus we hypothesize that it can be characterized with machine learning, and that attacks produce anomalous traffic. Our goals are to show that anomaly detection trained without understanding of the message contents can detect attacks, and to create a framework for understanding how the characteristics of a novel attack can be used to predict its detectability. We developed a model that describes attacks based on their effect on bus traffic, informed by a review of published material on car hacking in combination with analysis of CAN traffic from a 2012 Subaru Impreza. The model specifies three high-level categories of effects: attacks that insert foreign packets, attacks that affect packet timing, and attacks that only modify data within packets. Foreign packet attacks are trivially detectable. For timing-based anomalies, we developed features suitable for one-class classification methods. For packet stream data word anomalies, we adapted recurrent neural networks and multivariate Markov model methods to sequence anomaly detection and compared their performance. We conducted experiments to evaluate our detection methods with special attention to the trade-off between precision and recall, given that a practical system requires a very low false alarm rate. The methods were evaluated by synthesizing anomalies within each attack category, parameterized to adjust their covertness. We generalize from the results to enable prediction of detection rates for new attacks using these methods.
79

Intrustion Detection in Soho Networks using Elasticsearch SIEM

Nwosu, Ikechukwu C. 05 October 2021 (has links)
No description available.
80

Identification of Compromised Nodes in Collaborative Intrusion Detection Systems for Large Scale Networks Due to Insider Attacks

January 2020 (has links)
abstract: Large organizations have multiple networks that are subject to attacks, which can be detected by continuous monitoring and analyzing the network traffic by Intrusion Detection Systems. Collaborative Intrusion Detection Systems (CIDS) are used for efficient detection of distributed attacks by having a global view of the traffic events in large networks. However, CIDS are vulnerable to internal attacks, and these internal attacks decrease the mutual trust among the nodes in CIDS required for sharing of critical and sensitive alert data in CIDS. Without the data sharing, the nodes of CIDS cannot collaborate efficiently to form a comprehensive view of events in the networks monitored to detect distributed attacks. The compromised nodes will further decrease the accuracy of CIDS by generating false positives and false negatives of the traffic event classifications. In this thesis, an approach based on a trust score system is presented to detect and suspend the compromised nodes in CIDS to improve the trust among the nodes for efficient collaboration. This trust score-based approach is implemented as a consensus model on a private blockchain because private blockchain has the features to address the accountability, integrity and privacy requirements of CIDS. In this approach, the trust scores of malicious nodes are decreased with every reported false negative or false positive of the traffic event classifications. When the trust scores of any node falls below a threshold, the node is identified as compromised and suspended. The approach is evaluated for the accuracy of identifying malicious nodes in CIDS. / Dissertation/Thesis / Masters Thesis Computer Science 2020

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