39,265 research outputs found
Multitask Active Learning for Graph Anomaly Detection
In the web era, graph machine learning has been widely used on ubiquitous
graph-structured data. As a pivotal component for bolstering web security and
enhancing the robustness of graph-based applications, the significance of graph
anomaly detection is continually increasing. While Graph Neural Networks (GNNs)
have demonstrated efficacy in supervised and semi-supervised graph anomaly
detection, their performance is contingent upon the availability of sufficient
ground truth labels. The labor-intensive nature of identifying anomalies from
complex graph structures poses a significant challenge in real-world
applications. Despite that, the indirect supervision signals from other tasks
(e.g., node classification) are relatively abundant. In this paper, we propose
a novel MultItask acTIve Graph Anomaly deTEction framework, namely MITIGATE.
Firstly, by coupling node classification tasks, MITIGATE obtains the capability
to detect out-of-distribution nodes without known anomalies. Secondly, MITIGATE
quantifies the informativeness of nodes by the confidence difference across
tasks, allowing samples with conflicting predictions to provide informative yet
not excessively challenging information for subsequent training. Finally, to
enhance the likelihood of selecting representative nodes that are distant from
known patterns, MITIGATE adopts a masked aggregation mechanism for distance
measurement, considering both inherent features of nodes and current labeled
status. Empirical studies on four datasets demonstrate that MITIGATE
significantly outperforms the state-of-the-art methods for anomaly detection.
Our code is publicly available at: https://github.com/AhaChang/MITIGATE.Comment: Preprint. Under review. Code available at
https://github.com/AhaChang/MITIGAT
Applications of Machine Learning to Threat Intelligence, Intrusion Detection and Malware
Artificial Intelligence (AI) and Machine Learning (ML) are emerging technologies with applications to many fields. This paper is a survey of use cases of ML for threat intelligence, intrusion detection, and malware analysis and detection. Threat intelligence, especially attack attribution, can benefit from the use of ML classification. False positives from rule-based intrusion detection systems can be reduced with the use of ML models. Malware analysis and classification can be made easier by developing ML frameworks to distill similarities between the malicious programs. Adversarial machine learning will also be discussed, because while ML can be used to solve problems or reduce analyst workload, it also introduces new attack surfaces
User-profile-based analytics for detecting cloud security breaches
While the growth of cloud-based technologies has benefited the society tremendously, it has also increased the surface area for cyber attacks. Given that cloud services are prevalent today, it is critical to devise systems that detect intrusions. One form of security breach in the cloud is when cyber-criminals compromise Virtual Machines (VMs) of unwitting users and, then, utilize user resources to run time-consuming, malicious, or illegal applications for their own benefit. This work proposes a method to detect unusual resource usage trends and alert the user and the administrator in real time. We experiment with three categories of methods: simple statistical techniques, unsupervised classification, and regression. So far, our approach successfully detects anomalous resource usage when experimenting with typical trends synthesized from published real-world web server logs and cluster traces. We observe the best results with unsupervised classification, which gives an average F1-score of 0.83 for web server logs and 0.95 for the cluster traces
Role based behavior analysis
Tese de mestrado, Segurança Informática, Universidade de Lisboa, Faculdade de CiĂŞncias, 2009Nos nossos dias, o sucesso de uma empresa depende da sua agilidade e capacidade de se adaptar a condições que se alteram rapidamente. Dois requisitos para esse sucesso sĂŁo trabalhadores proactivos e uma infra-estrutura ágil de Tecnologias de InformacĂŁo/Sistemas de Informação (TI/SI) que os consiga suportar. No entanto, isto nem sempre sucede. Os requisitos dos utilizadores ao nĂvel da rede podem nao ser completamente conhecidos, o que causa atrasos nas mudanças de local e reorganizações. AlĂ©m disso, se nĂŁo houver um conhecimento preciso dos requisitos, a infraestrutura de TI/SI poderá ser utilizada de forma ineficiente, com excessos em algumas áreas e deficiĂŞncias noutras. Finalmente, incentivar a proactividade nĂŁo implica acesso completo e sem restrições, uma vez que pode deixar os sistemas vulneráveis a ameaças externas e internas. O objectivo do trabalho descrito nesta tese Ă© desenvolver um sistema que consiga caracterizar o comportamento dos utilizadores do ponto de vista da rede. Propomos uma arquitectura de sistema modular para extrair informação de fluxos de rede etiquetados. O processo Ă© iniciado com a criação de perfis de utilizador a partir da sua informação de fluxos de rede. Depois, perfis com caracterĂsticas semelhantes sĂŁo agrupados automaticamente, originando perfis de grupo. Finalmente, os perfis individuais sĂŁo comprados com os perfis de grupo, e os que diferem significativamente sĂŁo marcados como anomalias para análise detalhada posterior. Considerando esta arquitectura, propomos um modelo para descrever o comportamento de rede dos utilizadores e dos grupos. Propomos ainda mĂ©todos de visualização que permitem inspeccionar rapidamente toda a informação contida no modelo. O sistema e modelo foram avaliados utilizando um conjunto de dados reais obtidos de um operador de telecomunicações. Os resultados confirmam que os grupos projectam com precisĂŁo comportamento semelhante. AlĂ©m disso, as anomalias foram as esperadas, considerando a população subjacente. Com a informação que este sistema consegue extrair dos dados em bruto, as necessidades de rede dos utilizadores podem sem supridas mais eficazmente, os utilizadores suspeitos sĂŁo assinalados para posterior análise, conferindo uma vantagem competitiva a qualquer empresa que use este sistema.In our days, the success of a corporation hinges on its agility and ability to adapt to fast changing conditions. Proactive workers and an agile IT/IS infrastructure that can support them is a requirement for this success. Unfortunately, this is not always the case. The user’s network requirements may not be fully understood, which slows down relocation and reorganization. Also, if there is no grasp on the real requirements, the IT/IS infrastructure may not be efficiently used, with waste in some areas and deficiencies in others. Finally, enabling proactivity does not mean full unrestricted access, since this may leave the systems vulnerable to outsider and insider threats. The purpose of the work described on this thesis is to develop a system that can characterize user network behavior. We propose a modular system architecture to extract information from tagged network flows. The system process begins by creating user profiles from their network flows’ information. Then, similar profiles are automatically grouped into clusters, creating role profiles. Finally, the individual profiles are compared against the roles, and the ones that differ significantly are flagged as anomalies for further inspection. Considering this architecture, we propose a model to describe user and role network behavior. We also propose visualization methods to quickly inspect all the information contained in the model. The system and model were evaluated using a real dataset from a large telecommunications operator. The results confirm that the roles accurately map similar behavior. The anomaly results were also expected, considering the underlying population. With the knowledge that the system can extract from the raw data, the users network needs can be better fulfilled, the anomalous users flagged for inspection, giving an edge in agility for any company that uses it
- …