Data visualisation in digital forensics
Abstract (Summary)
As digital crimes have risen, so has the need for digital forensics. Numerous
state-of-the-art tools have been developed to assist digital investigators conduct
proper investigations into digital crimes. However, digital investigations are
becoming increasingly complex and time consuming due to the amount of data
involved, and digital investigators can find themselves unable to conduct them in
an appropriately efficient and effective manner. This situation has prompted the
need for new tools capable of handling such large, complex investigations. Data
mining is one such potential tool. It is still relatively unexplored from a digital
forensics perspective, but the purpose of data mining is to discover new
knowledge from data where the dimensionality, complexity or volume of data is
prohibitively large for manual analysis.
This study assesses the self-organising map (SOM), a neural network model
and data mining technique that could potentially offer tremendous benefits to
digital forensics. The focus of this study is to demonstrate how the SOM can help
digital investigators to make better decisions and conduct the forensic analysis
process more efficiently and effectively during a digital investigation. The
SOM’s visualisation capabilities can not only be used to reveal interesting
patterns, but can also serve as a platform for further, interactive analysis.
Bibliographical Information:
Advisor:
School:University of Pretoria/Universiteit van Pretoria
School Location:South Africa
Source Type:Master's Thesis
Keywords:computer crimes data mining
ISBN:
Date of Publication: