Application of growing hierarchical SOM for visualisation of network forensics traffic data

Date

2012-08

Advisors

Journal Title

Journal ISSN

ISSN

0893-6080

Volume Title

Publisher

Elsevier

Type

Article

Peer reviewed

Abstract

Digital investigation methods are becoming more and more important due to the proliferation of digital crimes and crimes involving digital evidence. Network forensics is a research area that gathers evidence by collecting and analysing network traffic data logs. This analysis can be a difficult process, especially because of the high variability of these attacks and large amount of data. Therefore, software tools that can help with these digital investigations are in great demand. In this paper, a novel approach to analysing and visualising network traffic data based on growing hierarchical self-organising maps (GHSOM) is presented. The self-organising map (SOM) has been shown to be successful for the analysis of highly dimensional input data in data mining applications as well as for data visualisation in a more intuitive and understandable manner. However, the SOM has some problems related to its static topology and its inability to represent hierarchical relationships in the input data. The GHSOM tries to overcome these limitations by generating a hierarchical architecture that is automatically determined according to the input data and reflects the inherent hierarchical relationships among them. Moreover, the proposed GHSOM has been modified to correctly treat the qualitative features that are present in the traffic data in addition to the quantitative features. Experimental results show that this approach can be very useful for a better understanding of network traffic data, making it easier to search for evidence of attacks or anomalous behaviour in a network environment.

Description

Keywords

network forensics, hierarchical self-organisation, data clustering, data visualisation, feature extraction

Citation

Palomo, E.J., North, J., Elizondo, D., Luque, R.M. and Watson T (2012) Application of growing hierarchical SOM for visualisation of network forensics traffic data. Neural Networks (Special Issue), 32, pp 275-284

Rights

Research Institute