Forensic analysis requires a keen detective mind, but the human mind has neither the ability nor the time to process the millions of bytes on a typical computer hard disk. Digital forensic investigators need powerful tools that can automate many of the analysis tasks that are currently being performed manually. This paper argues that forensic analysis can greatly benefit from research in knowledge discovery and data mining, which has developed powerful automated techniques for analyzing massive quantities of data to discern novel, potentially useful patterns. We use the term “evidence mining ” to refer to the application of these techniques in the analysis phase of digital forensic investigations. This paper presents a novel approach involving the specialization of CRISP-DM, a cross-industry standard process for data mining, to CRISP-EM, an evidence mining methodology designed specifically for digital forensics. In addition to supporting forensic analysis, the CRISP-EM methodology offers a structured approach for defining the research gaps in evidence mining.
Reference:
Venter, JP, De Waal, A and Willers, N. 2007. Specializing CRISP-DM for evidence mining. Advances in Digital Forensics III. IFIP International Federation for Information Processing, 2007, Volume 242/2007, pp 303-315
Venter, J., De Waal, A., & Willers, N. (2007). Specializing CRISP-DM for evidence mining., SpringerLink.com. http://hdl.handle.net/10204/5539
Venter, JP, A De Waal, and N Willers. "Specializing CRISP-DM for evidence mining" In , n.p.: SpringerLink.com. 2007. http://hdl.handle.net/10204/5539.
Venter J, De Waal A, Willers N. Specializing CRISP-DM for evidence mining. [place unknown]: SpringerLink.com; 2007. [cited yyyy month dd]. http://hdl.handle.net/10204/5539.
Advances in Digital Forensics III IFIP International Conference on Digital Forensics, National Centre for Forensic Science, Orlando, Florida, January 28-January 31, 2007