Abstract. Faced to continuous arising new threats, the detection of anomalies in current operational networks has become essential. Network operators have to deal with huge data volumes for analysis purpose. To counter this main issue, dealing with IP flow (also known as Netflow) records is common in network management. However, still in modern networks, Netflow records represent high volume of data. In this paper, we present an approach for evaluating Netflow records by referring to a method of temporal aggregation applied to Machine Learning techniques. We present an approach that leverages support vector machines in order to analyze large volumes of Netflow records. Our approach is using a special kernel function, that takes into account both the contextual and the quantitative information of Netflow records. We assess the viability of our method by practical experimentation on data volumes provided by a major internet service provider in Luxembourg.
This paper addresses a fundamentally new method for analyzing the behavior of executed applications and sessions. We describe a modeling framework capable of representing relationships among processes belonging to the same session in an integrated way, as well as the information related to the underlying system calls executed. We leverage for this purpose graph-based kernels and Support Vector Machines (SVM) in order to classify either individually monitored applications or more comprehensive user sessions. Our approach can serve both as a host-level intrusion detection and application level monitoring and as an adaptive jail framework.
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