Visible to the public Big data analysis system concept for detecting unknown attacks

TitleBig data analysis system concept for detecting unknown attacks
Publication TypeConference Paper
Year of Publication2014
AuthorsSung-Hwan Ahn, Nam-Uk Kim, Tai-Myoung Chung
Conference NameAdvanced Communication Technology (ICACT), 2014 16th International Conference on
Date PublishedFeb
Keywordsadvanced persistent threat detection, Alarm systems, APT detection, Big Data, Big Data analysis system, Big Data analysis techniques, Computer crime, critical infrastructures, cyber-attacks, data handling, data mining, Data models, Data storage systems, defence technologies, detection rate, future attack detection, hacking attacks, information extraction, Information management, Intrusion detection, large-scale system attacks, Monitoring, pattern matching methods, personal information leakage, prevention system, security, security systems, service destruction, state agencies, unknown attack detection
Abstract

Recently, threat of previously unknown cyber-attacks are increasing because existing security systems are not able to detect them. Past cyber-attacks had simple purposes of leaking personal information by attacking the PC or destroying the system. However, the goal of recent hacking attacks has changed from leaking information and destruction of services to attacking large-scale systems such as critical infrastructures and state agencies. In the other words, existing defence technologies to counter these attacks are based on pattern matching methods which are very limited. Because of this fact, in the event of new and previously unknown attacks, detection rate becomes very low and false negative increases. To defend against these unknown attacks, which cannot be detected with existing technology, we propose a new model based on big data analysis techniques that can extract information from a variety of sources to detect future attacks. We expect our model to be the basis of the future Advanced Persistent Threat(APT) detection and prevention system implementations.

DOI10.1109/ICACT.2014.6778962
Citation Key6778962