Chat-logs are informative digital footprints available on Social Media Platforms (SMPs). With the rise of cybercrimes targeting children, chat-logs can be used to discover and flag harmful behaviour for the attention of law enforcement units. This can make an important contribution to the safety of minors on SMPs from being exploited by online predators. The problem is that digital forensic investigation is mostly manual. Thus, a daunting task for forensic investigators because of the sheer volume and variety of data. The solution that is proposed in this paper employs a Digital Forensic Process Model that is supported by Machine Learning (ML) methods to facilitate the automatic discovery of harmful conversations in chat-logs. ML has already been successfully applied in the domain of text analysis for the discovery of online sexual predatory chats. However, there is an absence of approaches that show how ML can contribute to a digital forensic investigation. Thus, the contribution of this paper is to indicate how the tasks in a digital forensic investigation process can be organised so to obtain useable ML results when investigating online predators.
Reference:
Ngejane, H.C., Eloff, J., Sefara, T.J. & Marivate, V. 2021. Digital forensics supported by machine learning for the detection of online sexual predatory chats. Forensic science international: Digital investigation, 36. http://hdl.handle.net/10204/11966
Ngejane, H. C., Eloff, J., Sefara, T. J., & Marivate, V. (2021). Digital forensics supported by machine learning for the detection of online sexual predatory chats. Forensic science international: Digital investigation, 36, http://hdl.handle.net/10204/11966
Ngejane, Hombakazi C, JHP Eloff, Tshephisho J Sefara, and VN Marivate "Digital forensics supported by machine learning for the detection of online sexual predatory chats." Forensic science international: Digital investigation, 36 (2021) http://hdl.handle.net/10204/11966
Ngejane HC, Eloff J, Sefara TJ, Marivate V. Digital forensics supported by machine learning for the detection of online sexual predatory chats. Forensic science international: Digital investigation, 36. 2021; http://hdl.handle.net/10204/11966.