Anomaly detection using network traffic characterization
by
 
Yarımtepe, Oğuz.

Title
Anomaly detection using network traffic characterization

Author
Yarımtepe, Oğuz.

Personal Author
Yarımtepe, Oğuz.

Publication Information
[s.l.]: [s.n.], 2009.

Physical Description
ix, 80 leaves.: ill. + 1 computer laser optical disc.

Abstract
Detecting suspicious traffic and anomaly sources are a general tendency about approaching the traffic analyzing. Since the necessity of detecting anomalies, different approaches are developed with their software candidates. Either event based or signature based anomaly detection mechanism can be applied to analyze network traffic. Signature based approaches require the detected signatures of the past anomalies though event based approaches propose a more flexible approach that is defining application level abnormal anomalies is possible. Both approach focus on the implementing and defining abnormal traffic. The problem about anomaly is that there is not a common definition of anomaly for all protocols or malicious attacks. In this thesis it is aimed to define the non-malicious traffic and extract it, so that the rest is marked as suspicious traffic for further traffic. To achieve this approach, a method and its software application to identify IP sessions, based on statistical metrics of the packet flows are presented. An adaptive network flow knowledge-base is derived. The knowledge-base is constructed using calculated flows attributes. A method to define known traffic is displayed by using the derived flow attributes. By using the attributes, analyzed flow is categorized as a known application level protocol. It is also explained a mathematical model to analyze the undefined traffic to display network traffic anomalies. The mathematical model is based on principle component analysis which is applied on the origindestination pair flows. By using metric based traffic characterization and principle component analysis it is observed that network traffic can be analyzed and some anomalies can be detected.

Subject Term
Computer security.
 
Anomaly detection(Computer security)

Added Author
Tuğlular, Tuğkan.

Added Corporate Author
İzmir Institute Of Technology. Computer Engineering.

Added Uniform Title
Thesis (Master)--İzmir Institute Of Technology:Computer Engineering.
 
İzmir Institute of Technology:Computer Engineering--Thesis (Master).

Electronic Access
Access to Electronic Version.


LibraryMaterial TypeItem BarcodeShelf NumberStatus
IYTE LibraryThesisT000819QA76.9.A25 Y28 2009Tez Koleksiyonu
IYTE LibrarySupplementary CD-ROMROM1372QA76.9.A25 Y28 2009 EK1Tez Koleksiyonu